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Image Processing
                  –
    The Programming Fundamentals
                                           First Edition
                                           Revision 1.0




                                  A text to accompany

                                 Image Apprentice
The C/C++ based Image Processing Learner’s Toolkit.




Copyright © 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
2



                         This document is available at http://adislindia.com/documents/DIP_Programming_Fundamentals.pdf
                                             The author can be reached at: http://www.adislindia.com/people/~divya/index.htm




       Image Processing – The Programming Fundamentals


       Prerequisites: A brief knowledge of C/C++ language(s).

       This text describes the basic computer programming (C/C++) techniques required to begin
       practical implementations in Digital Image Processing. After reading the text, the reader would be
       in a position to understand and identify:

       •         How uncompressed images are stored digitally
       •         Typical data structures needed to handle digital image data
       •         How to implement a generic image processing algorithm as function




Mathematically, an image can be considered as a function of 2 variables, f(x, y),
where x and y are spatial coordinates and the value of the function at given pair
of coordinates (x, y) is called the intensity value.


The programming counterpart of such a function could be a one or two
dimensional array. Code Snippet 1 and Code Snippet 2 show how to traverse
and use 1-D and 2-D arrays programmatically. Both of them essentially can
represent an image as shown in Figure 1.


                              width = 256                                                    width = 256 pixels


 0         1       2     3    4     5       ....   253   254   255

 0         1       2     3    4     5       ....   253   254   255

 0         1       2     3    4     5       ....   253   254   255

 0         1       2     3    4     5       ....   253   254   255
                                                                      height =
                                             .                       256 pixels
 .         .       .     .     .     .              .     .     .
                                             .
 .         .       .     .     .     .              .     .     .
                                            ....
 .         .       .     .     .     .              .     .     .
                                             .
 .         .       .     .     .     .              .     .     .
                                             .

 0         1       2     3    4     5       ....   253   254   255

                              (A)                                                                     (B)

                Figure 1: Values in the grid represent the grayscale intensities of the image on the right.
               (A) Intensitiy values shown in a grid of same dimension as image (B) Image as seen on monitor




     Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
      Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com               2
3

//    Following code declares a 1-D array of type ‘unsigned byte’ having
//    size 256*256. It then puts values from 0 through 255 in each row.

int width, height;                              // width and height of image
int offset;                                     // num of elements traversed in array
int value;                                      // image intensity value
width = height = 256;
value = offset = 0;
unsigned byte array_1D[height                   * width];

for(int j=0; j<height; j++)         // traverse height (or rows)
{
      offset = width * j;           // modify offset travelled
      for(int i=0; i<width; i++)    // traverse width (or columns)
      {
            array_1D[offset + i] = value++;     // update value at
                                                // current index i.e.
                                                // (offset+i)
      }
      value = 0;
}
                              Code Snippet 1


//    Following code declares a 2-D array of type ‘unsigned byte’ having
//    size 256*256. It then puts values from 0 through 255 in each row.

int width, height;            // width and height of image
int value;                    // image intensity value
width = height = 256;
value = 0;
unsigned byte array_2D[height][width];

for(int j=0; j<height; j++)         // traverse height (or rows)
{
      for(int i=0; i<width; i++)    // traverse width (or columns)
      {
            array_2D[j][i] = value++;      // update value at
                                           // current (i, j)
      }
      value = 0;
}
                              Code Snippet 2

The ‘for’ loop in Code Snippet 1 and 2 can be visualized as shown in Figure 2.
                       Y=0          0     1     2     3     4     5    ....   253   254   255

                       Y=1          0     1     2     3     4     5    ....   253   254   255

                       Y=2          0     1     2     3     4     5    ....   253   254   255

                       Y=3          0     1     2     3     4          ....

                                                                         .
                                    .     .     .     .      .     .           .     .     .
                                                                         .
                                    .     .     .     .      .     .           .     .     .
                                                                       ....
                                    .     .     .     .      .     .           .     .     .
                                                                        .
                                    .     .     .     .      .     .           .     .     .
                                                                        .

                        Y = 255

 Figure 2: Array traversal in a ‘for’ loop. Note that rows are being accessed one after the other. This is
 known as 'Row Major Traversal’. The graphic suggests that in the current iteration, x = 4 and y = 3 both
 starting from 0.


     Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
      Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com    3
4




Dynamic Memory Allocation in C++

In Code Snippet 1 and 2, memory for the arrays is being allocated statically.
This means that the compiler knows the array size during compilation process.
However, in most image processing algorithms, the dimensions of the image
(the width and height) are not known in the compile time. The application gets
to know about it only in the run time when the user opens an image (i.e.
supplies it to the program). This gives way to the need of allocating memory
‘dynamically’. Dynamic memory allocation in C/C++ requires the programmer to
deallocate the memory too. The step by step methods to allocate/deallocate
memory using C++ keywords ‘new’ and ‘delete’ are as follows:

1-D Array:

This is achieved using a pointer to the appropriate data type (‘unsigned byte’
in this case). Code other than that in Code Snippet 1 and 2 is written in bold
typeface.


int width, height;                            // width and height of image
int offset;                                   // num of elements traversed in array
int value;                                    // image intensity value
value = offset = 0;

unsigned byte* array_1D = NULL;                         // Pointer to unsigned byte

// Get width and height from user, say using scanf().
// This could have been from the user interface or just anywhere.
scanf(“%d”, &width);                // Get width from user input
scanf(“%d”, &height);               // Get height from user input

// Now we have the user supplied width and height
// Utilize user supplied width and height for dynamic allocation
array_1D = new unsigned byte[height*width];
if(array_1D == NULL) return;        // return if memory not allocated

for(int j=0; j<height; j++)         // traverse height (or rows)
{
      offset = width * j;           // modify offset travelled
      for(int i=0; i<width; i++)    // traverse width (or columns)
      {
            // update value at current index i.e. (offset+i)
            array_1D[offset + i] = value++;
      }
      value = 0;
}

// After complete usage, delete the memory dynamically allocated
delete[] array_1D;
                              Code Snippet 3




   Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
    Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com    4
5



 2-D Array:

 This is achieved using a pointer to a pointer (or, double pointer) to the
 appropriate data type (‘unsigned byte’ in this case). Code other than that in
 Code Snippet 1 and 2 is written in bold typeface.


 int width, height;                            // width and height of image
 int value = 0;                                // image intensity value

 unsigned byte** array_2D = NULL;    // Ptr                          to a Ptr to unsigned byte
 // Following could have been from the user                          interface or just anywhere.
 scanf(“%d”, &width);                // Get                          width from user input
 scanf(“%d”, &height);               // Get                          height from user input

 // Allocation is going to be a 2 step process. First allocate a
 // ‘1-D array of pointers’ [NOTE THIS] of length ‘height’
 array_2D = new unsigned byte*[height];
 if(array_2D == NULL) return;        // return if memory not allocated
 // For each of these pointers, allocate memory of size ‘width’
 for(int j=0; j<height; j++)
 {
       array_2D[j] = new unsigned byte[width];
       if(array_2D[j] == NULL) return;// return if memory not allocated
 }

 for(j=0; j<height; j++)       // traverse height (or rows)
 {
       for(int i=0; i<width; i++)    // traverse width (or columns)
       {
             array_2D[j][i] = value++;// update value at current (i, j)
       }
       value = 0;
 }

 // After complete usage, delete the memory dynamically allocated
 for(j=height-1; j>= 0; j--) delete[] array_2d[j]; //delete rows
 delete[] array_2d;//delete the pointer to pointer
                               Code Snippet 4

 Here’s the explanation (Figure 3) with an example of a 2D array of width = 6
 and height = 5:


                                                                                                                     2
                                                                                                                     D

                                                                                                                     A
unsigned byte** array_2D                                                                                             R
                                                                                                                     R
                                                                                                                     A
                                                                                                                     Y



 array_2D points to a                It is allocated ‘height’ number of              Each row is allocated ‘width’
      pointer to                      elements (which are pointers to                number of unsigned byte
   unsigned byte                               unsigned byte)                                 elements

                    Figure 3: Steps involved in dynamic memory allocation for a 2D array


    Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
     Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com           5
6




Color Planes explained

Each basic colot (Red, Green and Blue) is displayed separately and is stored as an
array of unsigned byte and hence the nomenclature ‘Color Plane’. This means
each of R, G, and B plane has range of [0, 255]. As Figure 4 suggests, when the
3 planes get merged on the display device, they appear like a color image. If all
the 3 color planes have same values at corresponding coordinates, the image
gives the impression of a grayscale image. As there is same information in all
the 3 planes, while storing a grayscale image we store the information of only 1
plane that is later replicated 3 times when displayed.

         Red Plane                                      Green Plane                                    Blue Plane




                     B0,0   G0,0   R0,0   B0,1   G0,1    R0,1     ....      B0,w-1 G0,w-1 R0,w-1

                     B1,0   G1,0   R1,0   B1,1   G1,1    R1,1     ....      B1,w-1 G1,w-1 R1,w-1

                     B2,0   G2,0   R2,0   B2,1   G2,1    R2,1     ....      B2,w-1 G2,w-1 R2,w-1

                     B3,0   G3,0   R3,0   B3,1   G3,1    R3,1     ....      B3,w-1 G3,w-1 R3,w-1
                                                                      .
                      .      .      .      .      .       .                    .         .         .
                                                                      .
                      .      .      .      .      .       .                    .         .         .
                                                                  ....
                      .      .      .      .      .       .                    .         .         .
                                                                   .
                                                                              B         G         R
                    Bh-1,0 Gh-1,0 Rh-1,0 Bh-1,1 Gh-1,1 Rh-1,1     ....
                                                                            h-1,w-1   h-1,w-1   h-1,w-1




                     B0,0   G0,0   R0,0   B0,1   G0,1    R0,1     ....      B0,n-1 G0,n-1 R0,n-1

  Figure 4: [A] R, G, and B planes when merged optically on display device, give rise to a color image.
         [B] Layout in the memory while storing an RGB image in a: (1) 2D Array (2) 1D Array


   Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
    Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com           6
7




Range of colors in various color depths

When displayed on a monitor, image data is sent as unsigned byte. The
minimum and maximum values of an unsigned byte are 0 (all 8 bits are 0) and
255 (all 8 bits are 1). Hence an unsigned byte can have a maximum possible of
256 different values. Keeping this in mind, we have the following:

       0   0    0 0 0 0 0             0                                  1   1    1 1 1 1 1             1
               unsigned byte                                                     unsigned byte

 Decimal equivalent = 0 (i.e. minimum value)              Decimal equivalent = 255 (i.e. maximum value)


24 Bit or RGB images: Each component (R, G and B) constitute one unsigned
byte and can have 256 different values. Hence the total number of colors in an
RGB image can be 256*256*256 i.e. 16777216 or 16 million colors. Bytes
consumed per pixel here is 3.


8 Bit images: As discussed above, they can have a maximum of 256 different
shades. Bytes consumed per pixel here is 1.

1 Bit images: 2 possible values, either 0 or 1.


1D to 2D array copying (and vice versa)

At times situation may arise when we have to copy the contents of a 1D array to
a 2D array. Code Snippet 5 shows how to do that.


//   This assumes that we have a defined and populated 1D array
//   declared as ‘array_1D’ of type ‘unsigned byte’ (can be different)
//   and has dimension width*bytesPerPixel*height
//   where ‘width’ and ‘height’ are the physical size of the image.
//   bytesPerPixel = 3 (if RGB or 24 Bit image)
//   bytesPerPixel = 1 (if grayscale or 1 Byte image)

// Declare a double pointer of the type you want.
// This will point to the 2D array.
unsigned byte** array_2D;

// Now allocate memory as in Code Snippet 4
array_2D = new unsigned byte*[height];
if(array_2D == NULL) return;        // return if memory not allocated
// For each of these pointers, allocate memory of size ‘width’
for(int j=0; j<height; j++)
{
      array_2D[j] = new unsigned byte[width*bytesPerPixel];
      if(array_2D[j] == NULL) return;// return if memory not allocated
}

                             Code Snippet 5 (continued on next page...)


     Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
      Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com    7
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// Copy contents from the existing 1D array named array_1D
int offset = 0;
for(j=0; j<height; j++)       // traverse height (or rows)
{
      offset = width * bytesPerPixel * j;
      for(int i=0; i<width*bytesPerPixel; i++) // traverse width
      {
            array_2D[j][i] = array_1D[offset + i];    // update value at
                                                      // current (i, j)
      }
}

// After complete usage, delete the memory dynamically allocated
for(j=height-1; j>= 0; j--)
      delete[] array_2d[j]; //delete rows of pointers
delete[] array_2d; //delete the pointer to pointer

                                                Code Snippet 5


Code Snippet 6 shows how to copy the contents of a 2D array to a 1D array:



//   This assumes that we have a defined and populated 2D array
//   declared as ‘array_2D’ of type ‘unsigned byte’ (can be different)
//   and has size (width * bytesPerPixel) * height
//   where ‘width’ and ‘height’ are the physical size of the image.
//   bytesPerPixel = 3 (if RGB or 24 Bit image)
//   bytesPerPixel = 1 (if grayscale or 1 Byte image)

// Declare a pointer of the type you want.
// This will point to the 1D array
unsigned byte* array_1D;

// Now allocate memory for array_1D as in Code Snippet 3
array_1D = new unsigned byte[height*width*bytesPerPixel];
if(array_1D == NULL) return;        // return if memory not allocated

// Copy contents from the existing 2D array named array_2D
int offset = 0;
for(int j=0; j<height; j++)         // traverse height (or rows)
{
      offset = width * bytesPerPixel * j;
      for(int i=0; i<width*bytesPerPixel; i++) // traverse width
      {
            array_1D[offset + i] = array_2D[j][i];    // update value at
                                                      // current (i, j)
      }
}

// After complete usage, delete the memory dynamically allocated
delete[] array_1d; //delete the pointer to pointer

                                                Code Snippet 6




     Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
      Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com    8
9




Extracting individual R, G, B Planes from composite data

Assuming that one has a composite array of image data in the format
BGRBGRBGR… at times there might arise need to process each color plane (Red,
Green, and Blue) separately. Go through Code Snippet 7 to see how to do this.

//   This assumes that we have a defined and populated 1D array
//   declared as ‘array_1D’ of type ‘unsigned byte’ (can be different)
//   and has size width * bytesPerPixel * height
//   where ‘width’ and ‘height’ are the physical size of the image.
//   bytesPerPixel = 3 (as the it is an RGB or 24 Bit image)

// Declare three 2D arrays to store R,G, and B planes of image.
unsigned byte **arrayR_2D, **arrayG_2D, **arrayB_2D;

// Now allocate memory for array_1D as in Code Snippet 3
// To avoid repetition, we create a function to do this, Code Snippet 8.
arrayR_2D = Allocate2DArray(arrayR_2D, width, height);
arrayG_2D = Allocate2DArray(arrayG_2D, width, height);
arrayB_2D = Allocate2DArray(arrayB_2D, width, height);

// return if memory not allocated
if(arrayR_2D == NULL || arrayG_2D == NULL || arrayB_2D == NULL) return;

// Extract R,G,B planes from the existing composite 1D array
int offset = 0;
int counter = 0;
for(int j=0; j<height; j++)         // traverse height (or rows)
{
      offset = width * bytesPerPixel * j;
      for(int i=0; i<width*bytesPerPixel; i+=bytesPerPixel) // width
      {
            arrayB_2D[j][counter++] = array_1D[offset + i+0];
            arrayG_2D[j][counter++] = array_1D[offset + i+1];
            arrayR_2D[j][counter++] = array_1D[offset + i+2];
      }
      counter = 0;
}

// After complete usage, delete the memory dynamically allocated
DeAllocate2DArray(arrayR_2D, height);
DeAllocate2DArray(arrayG_2D, height);
DeAllocate2DArray(arrayB_2D, height);

                                                Code Snippet 7


To put 3 arrays containing R, G, and B data into one single composite array in
the BGRBGRBGR… order, one just has to modify the lines inside the 2 for loops
in Code Snippet 7 as below:

array_1D[offset + i+0] = arrayB_2D[j][counter++];
array_1D[offset + i+1] = arrayG_2D[j][counter++];
array_1D[offset + i+2] = arrayR_2D[j][counter++];




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      Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com    9
10



Code Snippet 8 has dynamic memory allocation in form of a function. It is
always a good practice to write reusable functions in programming.


unsigned byte** Allocate2DArray(unsigned byte** buffer, int w, int h)
{
      // Allocate memory as in Code Snippet 4
      buffer = new unsigned byte*[h];
      if(buffer == NULL) return;    // return if memory not allocated
      // For each of these pointers, allocate memory of size ‘w’
      for(int j=0; j<h; j++)
      {
            buffer[j] = new unsigned byte[w];
            if(buffer[j] == NULL) return;// return if not allocated
      }
      return buffer;
}

void DeAllocate2DArray(unsigned byte** buffer, int h)
{
      // After complete usage, delete the memory dynamically allocated
      for(int j=h-1; j>= 0; j--) delete[] buffer[j]; //delete rows
      delete[] buffer; //delete the pointer to pointer
}

int main()
{
      // Declare a 2D array.
      unsigned byte **array;

        // Get width and height from user, say using scanf().
        // Following could have been from the user interface
        // or just anywhere.
        scanf(“%d”, &width);          // Get width from user input
        scanf(“%d”, &height);         // Get height from user input

        // now call the function to allocate memory in 2D.
        array = Allocate2DArray(array, width, height);

        // return if memory not allocated
        if(arrayR_2D == NULL || arrayG_2D == NULL || arrayB_2D == NULL)
              return;

        // Now you can use the new 2D array in a way you like

        // After complete usage, delete the memory dynamically allocated
        DeAllocate2DArray(arrayR_2D, height);

        return 0;
}

                                               Code Snippet 8




    Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
     Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com     10
11




Normalization of data to the range [0,255]

At times, you have data that is not in the range [0, 255] but in some other range.
As computer displays need data in the range [0, 255], the out-of-range data
needs to be normalized before it can be sent to the display device.


void GetMinMax(double* buffer, int size, int* min, int* max)
{
      for(int i=0; i<size; i++)
      {
            if(data[i] > *max) *max = data[i];
            if(data[i] < *min) *min = data[i];
      }
}

// This normalizes between range [0, 255]
void Normalize(double* data, int size)
{
      double max, min;
      min = max = data[0];

        GetMinMax(data, size, &min, &max);

        for(int i=0; i< size; i++)
        {
              data[i] = (255.0*(data[i]-min)) / (max-min);
        }
}

int main()
{
      // Suppose we have a populated array, ‘array_1D’, of type double
      // and length ‘size’ and it has range other than [0, 255]
      Normalize(array_1D, size);

        // after this call, it has been normalized to range [0, 255]
}

                                               Code Snippet 9



References

    1. Image Apprentice, The C/C++ based Image Processing Learner’s Toolkit;
        http://www.adislindia.com
    2. 5 step guide to build Image Apprentice Plugins;
        http://adislindia.com/documents/5_step_guide.pdf
    3. C++ Language Tutorial; http://www.cplusplus.com/doc/tutorial/




    Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
     Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com     11

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Digital Image Processing: Programming Fundamentals

  • 1. Image Processing – The Programming Fundamentals First Edition Revision 1.0 A text to accompany Image Apprentice The C/C++ based Image Processing Learner’s Toolkit. Copyright © 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com
  • 2. 2 This document is available at http://adislindia.com/documents/DIP_Programming_Fundamentals.pdf The author can be reached at: http://www.adislindia.com/people/~divya/index.htm Image Processing – The Programming Fundamentals Prerequisites: A brief knowledge of C/C++ language(s). This text describes the basic computer programming (C/C++) techniques required to begin practical implementations in Digital Image Processing. After reading the text, the reader would be in a position to understand and identify: • How uncompressed images are stored digitally • Typical data structures needed to handle digital image data • How to implement a generic image processing algorithm as function Mathematically, an image can be considered as a function of 2 variables, f(x, y), where x and y are spatial coordinates and the value of the function at given pair of coordinates (x, y) is called the intensity value. The programming counterpart of such a function could be a one or two dimensional array. Code Snippet 1 and Code Snippet 2 show how to traverse and use 1-D and 2-D arrays programmatically. Both of them essentially can represent an image as shown in Figure 1. width = 256 width = 256 pixels 0 1 2 3 4 5 .... 253 254 255 0 1 2 3 4 5 .... 253 254 255 0 1 2 3 4 5 .... 253 254 255 0 1 2 3 4 5 .... 253 254 255 height = . 256 pixels . . . . . . . . . . . . . . . . . . . .... . . . . . . . . . . . . . . . . . . . . 0 1 2 3 4 5 .... 253 254 255 (A) (B) Figure 1: Values in the grid represent the grayscale intensities of the image on the right. (A) Intensitiy values shown in a grid of same dimension as image (B) Image as seen on monitor Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 2
  • 3. 3 // Following code declares a 1-D array of type ‘unsigned byte’ having // size 256*256. It then puts values from 0 through 255 in each row. int width, height; // width and height of image int offset; // num of elements traversed in array int value; // image intensity value width = height = 256; value = offset = 0; unsigned byte array_1D[height * width]; for(int j=0; j<height; j++) // traverse height (or rows) { offset = width * j; // modify offset travelled for(int i=0; i<width; i++) // traverse width (or columns) { array_1D[offset + i] = value++; // update value at // current index i.e. // (offset+i) } value = 0; } Code Snippet 1 // Following code declares a 2-D array of type ‘unsigned byte’ having // size 256*256. It then puts values from 0 through 255 in each row. int width, height; // width and height of image int value; // image intensity value width = height = 256; value = 0; unsigned byte array_2D[height][width]; for(int j=0; j<height; j++) // traverse height (or rows) { for(int i=0; i<width; i++) // traverse width (or columns) { array_2D[j][i] = value++; // update value at // current (i, j) } value = 0; } Code Snippet 2 The ‘for’ loop in Code Snippet 1 and 2 can be visualized as shown in Figure 2. Y=0 0 1 2 3 4 5 .... 253 254 255 Y=1 0 1 2 3 4 5 .... 253 254 255 Y=2 0 1 2 3 4 5 .... 253 254 255 Y=3 0 1 2 3 4 .... . . . . . . . . . . . . . . . . . . . . .... . . . . . . . . . . . . . . . . . . . . Y = 255 Figure 2: Array traversal in a ‘for’ loop. Note that rows are being accessed one after the other. This is known as 'Row Major Traversal’. The graphic suggests that in the current iteration, x = 4 and y = 3 both starting from 0. Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 3
  • 4. 4 Dynamic Memory Allocation in C++ In Code Snippet 1 and 2, memory for the arrays is being allocated statically. This means that the compiler knows the array size during compilation process. However, in most image processing algorithms, the dimensions of the image (the width and height) are not known in the compile time. The application gets to know about it only in the run time when the user opens an image (i.e. supplies it to the program). This gives way to the need of allocating memory ‘dynamically’. Dynamic memory allocation in C/C++ requires the programmer to deallocate the memory too. The step by step methods to allocate/deallocate memory using C++ keywords ‘new’ and ‘delete’ are as follows: 1-D Array: This is achieved using a pointer to the appropriate data type (‘unsigned byte’ in this case). Code other than that in Code Snippet 1 and 2 is written in bold typeface. int width, height; // width and height of image int offset; // num of elements traversed in array int value; // image intensity value value = offset = 0; unsigned byte* array_1D = NULL; // Pointer to unsigned byte // Get width and height from user, say using scanf(). // This could have been from the user interface or just anywhere. scanf(“%d”, &width); // Get width from user input scanf(“%d”, &height); // Get height from user input // Now we have the user supplied width and height // Utilize user supplied width and height for dynamic allocation array_1D = new unsigned byte[height*width]; if(array_1D == NULL) return; // return if memory not allocated for(int j=0; j<height; j++) // traverse height (or rows) { offset = width * j; // modify offset travelled for(int i=0; i<width; i++) // traverse width (or columns) { // update value at current index i.e. (offset+i) array_1D[offset + i] = value++; } value = 0; } // After complete usage, delete the memory dynamically allocated delete[] array_1D; Code Snippet 3 Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 4
  • 5. 5 2-D Array: This is achieved using a pointer to a pointer (or, double pointer) to the appropriate data type (‘unsigned byte’ in this case). Code other than that in Code Snippet 1 and 2 is written in bold typeface. int width, height; // width and height of image int value = 0; // image intensity value unsigned byte** array_2D = NULL; // Ptr to a Ptr to unsigned byte // Following could have been from the user interface or just anywhere. scanf(“%d”, &width); // Get width from user input scanf(“%d”, &height); // Get height from user input // Allocation is going to be a 2 step process. First allocate a // ‘1-D array of pointers’ [NOTE THIS] of length ‘height’ array_2D = new unsigned byte*[height]; if(array_2D == NULL) return; // return if memory not allocated // For each of these pointers, allocate memory of size ‘width’ for(int j=0; j<height; j++) { array_2D[j] = new unsigned byte[width]; if(array_2D[j] == NULL) return;// return if memory not allocated } for(j=0; j<height; j++) // traverse height (or rows) { for(int i=0; i<width; i++) // traverse width (or columns) { array_2D[j][i] = value++;// update value at current (i, j) } value = 0; } // After complete usage, delete the memory dynamically allocated for(j=height-1; j>= 0; j--) delete[] array_2d[j]; //delete rows delete[] array_2d;//delete the pointer to pointer Code Snippet 4 Here’s the explanation (Figure 3) with an example of a 2D array of width = 6 and height = 5: 2 D A unsigned byte** array_2D R R A Y array_2D points to a It is allocated ‘height’ number of Each row is allocated ‘width’ pointer to elements (which are pointers to number of unsigned byte unsigned byte unsigned byte) elements Figure 3: Steps involved in dynamic memory allocation for a 2D array Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 5
  • 6. 6 Color Planes explained Each basic colot (Red, Green and Blue) is displayed separately and is stored as an array of unsigned byte and hence the nomenclature ‘Color Plane’. This means each of R, G, and B plane has range of [0, 255]. As Figure 4 suggests, when the 3 planes get merged on the display device, they appear like a color image. If all the 3 color planes have same values at corresponding coordinates, the image gives the impression of a grayscale image. As there is same information in all the 3 planes, while storing a grayscale image we store the information of only 1 plane that is later replicated 3 times when displayed. Red Plane Green Plane Blue Plane B0,0 G0,0 R0,0 B0,1 G0,1 R0,1 .... B0,w-1 G0,w-1 R0,w-1 B1,0 G1,0 R1,0 B1,1 G1,1 R1,1 .... B1,w-1 G1,w-1 R1,w-1 B2,0 G2,0 R2,0 B2,1 G2,1 R2,1 .... B2,w-1 G2,w-1 R2,w-1 B3,0 G3,0 R3,0 B3,1 G3,1 R3,1 .... B3,w-1 G3,w-1 R3,w-1 . . . . . . . . . . . . . . . . . . . . .... . . . . . . . . . . B G R Bh-1,0 Gh-1,0 Rh-1,0 Bh-1,1 Gh-1,1 Rh-1,1 .... h-1,w-1 h-1,w-1 h-1,w-1 B0,0 G0,0 R0,0 B0,1 G0,1 R0,1 .... B0,n-1 G0,n-1 R0,n-1 Figure 4: [A] R, G, and B planes when merged optically on display device, give rise to a color image. [B] Layout in the memory while storing an RGB image in a: (1) 2D Array (2) 1D Array Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 6
  • 7. 7 Range of colors in various color depths When displayed on a monitor, image data is sent as unsigned byte. The minimum and maximum values of an unsigned byte are 0 (all 8 bits are 0) and 255 (all 8 bits are 1). Hence an unsigned byte can have a maximum possible of 256 different values. Keeping this in mind, we have the following: 0 0 0 0 0 0 0 0 1 1 1 1 1 1 1 1 unsigned byte unsigned byte Decimal equivalent = 0 (i.e. minimum value) Decimal equivalent = 255 (i.e. maximum value) 24 Bit or RGB images: Each component (R, G and B) constitute one unsigned byte and can have 256 different values. Hence the total number of colors in an RGB image can be 256*256*256 i.e. 16777216 or 16 million colors. Bytes consumed per pixel here is 3. 8 Bit images: As discussed above, they can have a maximum of 256 different shades. Bytes consumed per pixel here is 1. 1 Bit images: 2 possible values, either 0 or 1. 1D to 2D array copying (and vice versa) At times situation may arise when we have to copy the contents of a 1D array to a 2D array. Code Snippet 5 shows how to do that. // This assumes that we have a defined and populated 1D array // declared as ‘array_1D’ of type ‘unsigned byte’ (can be different) // and has dimension width*bytesPerPixel*height // where ‘width’ and ‘height’ are the physical size of the image. // bytesPerPixel = 3 (if RGB or 24 Bit image) // bytesPerPixel = 1 (if grayscale or 1 Byte image) // Declare a double pointer of the type you want. // This will point to the 2D array. unsigned byte** array_2D; // Now allocate memory as in Code Snippet 4 array_2D = new unsigned byte*[height]; if(array_2D == NULL) return; // return if memory not allocated // For each of these pointers, allocate memory of size ‘width’ for(int j=0; j<height; j++) { array_2D[j] = new unsigned byte[width*bytesPerPixel]; if(array_2D[j] == NULL) return;// return if memory not allocated } Code Snippet 5 (continued on next page...) Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 7
  • 8. 8 // Copy contents from the existing 1D array named array_1D int offset = 0; for(j=0; j<height; j++) // traverse height (or rows) { offset = width * bytesPerPixel * j; for(int i=0; i<width*bytesPerPixel; i++) // traverse width { array_2D[j][i] = array_1D[offset + i]; // update value at // current (i, j) } } // After complete usage, delete the memory dynamically allocated for(j=height-1; j>= 0; j--) delete[] array_2d[j]; //delete rows of pointers delete[] array_2d; //delete the pointer to pointer Code Snippet 5 Code Snippet 6 shows how to copy the contents of a 2D array to a 1D array: // This assumes that we have a defined and populated 2D array // declared as ‘array_2D’ of type ‘unsigned byte’ (can be different) // and has size (width * bytesPerPixel) * height // where ‘width’ and ‘height’ are the physical size of the image. // bytesPerPixel = 3 (if RGB or 24 Bit image) // bytesPerPixel = 1 (if grayscale or 1 Byte image) // Declare a pointer of the type you want. // This will point to the 1D array unsigned byte* array_1D; // Now allocate memory for array_1D as in Code Snippet 3 array_1D = new unsigned byte[height*width*bytesPerPixel]; if(array_1D == NULL) return; // return if memory not allocated // Copy contents from the existing 2D array named array_2D int offset = 0; for(int j=0; j<height; j++) // traverse height (or rows) { offset = width * bytesPerPixel * j; for(int i=0; i<width*bytesPerPixel; i++) // traverse width { array_1D[offset + i] = array_2D[j][i]; // update value at // current (i, j) } } // After complete usage, delete the memory dynamically allocated delete[] array_1d; //delete the pointer to pointer Code Snippet 6 Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 8
  • 9. 9 Extracting individual R, G, B Planes from composite data Assuming that one has a composite array of image data in the format BGRBGRBGR… at times there might arise need to process each color plane (Red, Green, and Blue) separately. Go through Code Snippet 7 to see how to do this. // This assumes that we have a defined and populated 1D array // declared as ‘array_1D’ of type ‘unsigned byte’ (can be different) // and has size width * bytesPerPixel * height // where ‘width’ and ‘height’ are the physical size of the image. // bytesPerPixel = 3 (as the it is an RGB or 24 Bit image) // Declare three 2D arrays to store R,G, and B planes of image. unsigned byte **arrayR_2D, **arrayG_2D, **arrayB_2D; // Now allocate memory for array_1D as in Code Snippet 3 // To avoid repetition, we create a function to do this, Code Snippet 8. arrayR_2D = Allocate2DArray(arrayR_2D, width, height); arrayG_2D = Allocate2DArray(arrayG_2D, width, height); arrayB_2D = Allocate2DArray(arrayB_2D, width, height); // return if memory not allocated if(arrayR_2D == NULL || arrayG_2D == NULL || arrayB_2D == NULL) return; // Extract R,G,B planes from the existing composite 1D array int offset = 0; int counter = 0; for(int j=0; j<height; j++) // traverse height (or rows) { offset = width * bytesPerPixel * j; for(int i=0; i<width*bytesPerPixel; i+=bytesPerPixel) // width { arrayB_2D[j][counter++] = array_1D[offset + i+0]; arrayG_2D[j][counter++] = array_1D[offset + i+1]; arrayR_2D[j][counter++] = array_1D[offset + i+2]; } counter = 0; } // After complete usage, delete the memory dynamically allocated DeAllocate2DArray(arrayR_2D, height); DeAllocate2DArray(arrayG_2D, height); DeAllocate2DArray(arrayB_2D, height); Code Snippet 7 To put 3 arrays containing R, G, and B data into one single composite array in the BGRBGRBGR… order, one just has to modify the lines inside the 2 for loops in Code Snippet 7 as below: array_1D[offset + i+0] = arrayB_2D[j][counter++]; array_1D[offset + i+1] = arrayG_2D[j][counter++]; array_1D[offset + i+2] = arrayR_2D[j][counter++]; Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 9
  • 10. 10 Code Snippet 8 has dynamic memory allocation in form of a function. It is always a good practice to write reusable functions in programming. unsigned byte** Allocate2DArray(unsigned byte** buffer, int w, int h) { // Allocate memory as in Code Snippet 4 buffer = new unsigned byte*[h]; if(buffer == NULL) return; // return if memory not allocated // For each of these pointers, allocate memory of size ‘w’ for(int j=0; j<h; j++) { buffer[j] = new unsigned byte[w]; if(buffer[j] == NULL) return;// return if not allocated } return buffer; } void DeAllocate2DArray(unsigned byte** buffer, int h) { // After complete usage, delete the memory dynamically allocated for(int j=h-1; j>= 0; j--) delete[] buffer[j]; //delete rows delete[] buffer; //delete the pointer to pointer } int main() { // Declare a 2D array. unsigned byte **array; // Get width and height from user, say using scanf(). // Following could have been from the user interface // or just anywhere. scanf(“%d”, &width); // Get width from user input scanf(“%d”, &height); // Get height from user input // now call the function to allocate memory in 2D. array = Allocate2DArray(array, width, height); // return if memory not allocated if(arrayR_2D == NULL || arrayG_2D == NULL || arrayB_2D == NULL) return; // Now you can use the new 2D array in a way you like // After complete usage, delete the memory dynamically allocated DeAllocate2DArray(arrayR_2D, height); return 0; } Code Snippet 8 Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 10
  • 11. 11 Normalization of data to the range [0,255] At times, you have data that is not in the range [0, 255] but in some other range. As computer displays need data in the range [0, 255], the out-of-range data needs to be normalized before it can be sent to the display device. void GetMinMax(double* buffer, int size, int* min, int* max) { for(int i=0; i<size; i++) { if(data[i] > *max) *max = data[i]; if(data[i] < *min) *min = data[i]; } } // This normalizes between range [0, 255] void Normalize(double* data, int size) { double max, min; min = max = data[0]; GetMinMax(data, size, &min, &max); for(int i=0; i< size; i++) { data[i] = (255.0*(data[i]-min)) / (max-min); } } int main() { // Suppose we have a populated array, ‘array_1D’, of type double // and length ‘size’ and it has range other than [0, 255] Normalize(array_1D, size); // after this call, it has been normalized to range [0, 255] } Code Snippet 9 References 1. Image Apprentice, The C/C++ based Image Processing Learner’s Toolkit; http://www.adislindia.com 2. 5 step guide to build Image Apprentice Plugins; http://adislindia.com/documents/5_step_guide.pdf 3. C++ Language Tutorial; http://www.cplusplus.com/doc/tutorial/ Copyright ©© 2005-2007, AdvancedDigital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com Copyright 2005-2007, Advanced Digital Imaging Solutions Laboratory (ADISL). http://www.adislindia.com 11