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 Advances in

mechatronics have resulted in
widespread of robotics.
 Today robots are controlled by computers.
 Technical advances are gradually increasing
their similarity to human.
 Engineers are attempting to add sensors to
enhance their ability to perform function.



Intelligence
Vision
 Robots could

not perform difficult tasks.
 AI to robots gives the power to make decision
and logical inferences.
 Robots use sensors and cameras to obtain
information from environment.
 Use of microprocessor in robotics is to
enhance their intelligence.
 ANN

is a network of processing elements
capable of doing processing in parallel and in
distributed manner.
 ANN is a mechanism work same as that of
human brain.
 ANNS are mathematical models of infoProcessing.
 It has two types:
a) Single layer Neural Network
b) Multi layer Neural Network
 Back

propagation is a technique with
backward error propagation.
 It reduces the error from hidden layers.
 In back propagation network the activation
function chosen is the tan sigmoid function.
 The sigmoid function accommodate large
signals without saturation.
 Sigmoid Transfer function is…
Yi = 1/1+e^-X
 Such

like AI vision is also essential for robots.
 Machine vision can be defined as the
acquisition of image, followed by processing
and interpretation of image by computer.
 A mini

robot was developed which was
capable of pushing the components.
 This robot consists of two cameras for vision.
These cameras capture the top and front image
of minimum resolution 128 128.
 There is a gripper used to place the
components into the bin.
 The gripper and cameras are controlled using
computers.
 The

captured image should be processed to
obtain the best results.
 There are three steps of image processing:
a) Image acquisition
b) Image processing I
c) Image processing II


In this stage the captured image is read by dividing
the bit map image into pixel.
 Each pixel has a value that is proportional to the light
intensive of that small proportion of the scene.
 The new divided image is stored from bottom to top.


ANN is developed in such a way that it will operate
only on binary codes, i.e. 0 and 1
 The captured image contains red, blue and green
ranges.
 Colored image should convert to black and white
image.
 This image contains a large amount of noise. Various
parameters are used to remove these noises.
 After removing the noises the tilted image is obtained.




The size of captured image is varying due to some eternal
factors.
To reset the size of image a technique, Set Partitioning In
Hierarchical Tree (SPIHT) method is used.
By SPIHT normal size image can be obtained.
 Camera

does not require a driver to operate.
 Brightness, resolution and other settings can
change.
 Separate module is provided for controlling
the robot.
 ANN is generalized network.
 Image identification time is faster.
 Learning time

increases as the number of
training cases increases.
 It requires some memory for Database
operation.
 If the position of cameras changed then it
requires training .
 The

developed ANN system has been tested
and the results are satisfactory.
 The proposed system can be implemented
without substantial modification, using
available equipment, thus the cost is very low.
 This research has two main directions,
a) Improvement in the integration of the system
b) Identification of components at various light
sources and environments.

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Intelligent robot used in the field of practical

  • 1.
  • 2.  Advances in mechatronics have resulted in widespread of robotics.  Today robots are controlled by computers.  Technical advances are gradually increasing their similarity to human.  Engineers are attempting to add sensors to enhance their ability to perform function.
  • 4.  Robots could not perform difficult tasks.  AI to robots gives the power to make decision and logical inferences.  Robots use sensors and cameras to obtain information from environment.  Use of microprocessor in robotics is to enhance their intelligence.
  • 5.  ANN is a network of processing elements capable of doing processing in parallel and in distributed manner.  ANN is a mechanism work same as that of human brain.  ANNS are mathematical models of infoProcessing.  It has two types: a) Single layer Neural Network b) Multi layer Neural Network
  • 6.  Back propagation is a technique with backward error propagation.  It reduces the error from hidden layers.  In back propagation network the activation function chosen is the tan sigmoid function.  The sigmoid function accommodate large signals without saturation.  Sigmoid Transfer function is… Yi = 1/1+e^-X
  • 7.  Such like AI vision is also essential for robots.  Machine vision can be defined as the acquisition of image, followed by processing and interpretation of image by computer.
  • 8.  A mini robot was developed which was capable of pushing the components.  This robot consists of two cameras for vision. These cameras capture the top and front image of minimum resolution 128 128.  There is a gripper used to place the components into the bin.  The gripper and cameras are controlled using computers.
  • 9.  The captured image should be processed to obtain the best results.  There are three steps of image processing: a) Image acquisition b) Image processing I c) Image processing II
  • 10.  In this stage the captured image is read by dividing the bit map image into pixel.  Each pixel has a value that is proportional to the light intensive of that small proportion of the scene.  The new divided image is stored from bottom to top.
  • 11.  ANN is developed in such a way that it will operate only on binary codes, i.e. 0 and 1  The captured image contains red, blue and green ranges.  Colored image should convert to black and white image.  This image contains a large amount of noise. Various parameters are used to remove these noises.  After removing the noises the tilted image is obtained.
  • 12.    The size of captured image is varying due to some eternal factors. To reset the size of image a technique, Set Partitioning In Hierarchical Tree (SPIHT) method is used. By SPIHT normal size image can be obtained.
  • 13.  Camera does not require a driver to operate.  Brightness, resolution and other settings can change.  Separate module is provided for controlling the robot.  ANN is generalized network.  Image identification time is faster.
  • 14.  Learning time increases as the number of training cases increases.  It requires some memory for Database operation.  If the position of cameras changed then it requires training .
  • 15.  The developed ANN system has been tested and the results are satisfactory.  The proposed system can be implemented without substantial modification, using available equipment, thus the cost is very low.  This research has two main directions, a) Improvement in the integration of the system b) Identification of components at various light sources and environments.

Notas do Editor

  1. Mechatronics is a design process that includes a combination of mechanical engineering, electrical engineering, control engineering and computer engineering. Mechatronics is a multidisciplinary field of engineering.