SlideShare uma empresa Scribd logo
1 de 10
Baixar para ler offline
Done by
Amit Kumar Keshri
Adil Mateen Khan
Aditya Prakash Rao
    Aditya Raj
What is ANDROID?
     A mobile OS initially developed by Android Inc. based
upon a modified version of linux.
Consists of Java apps running on Java based OO application
framework.
Developed by Open Handset Alliance in partnership with
Google.
Versions of android:
 a) Android 1.5
 b) Android 1.6
 c) Android 2.1
 d) Android 2.2 (Android FROYO)- most used version.
We propose a low priced system that is well suited to all
the requirements by using existing mainstream
technologies that are reliable. Our approach is to use
fasting growing device like programmable cellular phone.
Reasons for using android cell phone:
 Cost reduction.
 Integrated hardware.
 Cell phones are discrete than a dedicated monitor device
 To limit false positives we implement several fall
detection algorithms and two stages of communication
Background                         User response
    service for                        detection by
detecting fall using                  alerting user to
  accelerometer                           respond

                                                                     Timer to wait for
                        Reset ifall         If the user responds      user response
                       application

                                                                      If the user
                                                                      doesn’t
                                                                      respond

 Send emergency
message to the care                                                  Send message to
    authority                                                      social contacts set by
                                                                          the user.

                                Wait for people to
                                    respond
iFall runs a inconspicuously as possible while
using limited resources.
When the algorithm suspects a fall the service
will wake up and interrupt the user.
If the user responds, the previous activity is
restored and iFall will sleep again.
By only waking up the activity when a fall is
suspected or requested by the user, we allow
application to run on top of iFall while we
minimize our memory consumption and user
interaction.
Activities of Daily Living(ADL) are normal activities
such as walking and standing.
The forces exerted during ADL are usually different than
the forces during a fall.
A fall typically starts with a short free fall period.
This causes the acceleration’s amplitude to drop
significantly below the 1G threshold.
Reliability and reduced number of false
positives mean greater adoption by emergency
services.
Our system provides a viable solution to
increase fall detection among people.
Using existing, mass marketed technologies
will limit cost making it available to the
majority of the public.
Our system provides a viable solution to increase fall
detection among people. Using existing, mass marketed
technologies will limit cost making it available to the
majority of the public.
Implementing proven fall detection algorithms makes the
system highly reliable. Reliability and reduced number of
false positives mean greater adoption by emergency
services.
The importance of the cell phone in everyday life
decreases the chances of being forgotten. Everyday
interaction with the phone makes the interface more
familiar to the user.
A cell phone is also less intrusive than
dedicated devices
 The familiar interface, non-intrusiveness, and
affordability leads to less rejection from users.
By combining cheap hardware and open
source software, we hope to provide a realistic
answer to reducing the long-lie period for the
elderly.
I fall ppt

Mais conteúdo relacionado

Destaque

24th JCAART 2009 Conference
24th JCAART 2009 Conference24th JCAART 2009 Conference
24th JCAART 2009 Conferencesuvonvorn
 
Sensorless sensing with wi fi
Sensorless sensing with wi fiSensorless sensing with wi fi
Sensorless sensing with wi fiashajuly20
 
Cuestionario resuelto
Cuestionario resueltoCuestionario resuelto
Cuestionario resueltosara marcos
 
Wireless black box using mems accelerometer and gps tracking
Wireless black box using mems accelerometer and gps trackingWireless black box using mems accelerometer and gps tracking
Wireless black box using mems accelerometer and gps trackingHemanth Hemu
 
Android Emergency Alert with Fall Detection
Android Emergency Alert with Fall DetectionAndroid Emergency Alert with Fall Detection
Android Emergency Alert with Fall DetectionLouis Shue
 

Destaque (7)

Automatic fall detection
Automatic fall detectionAutomatic fall detection
Automatic fall detection
 
24th JCAART 2009 Conference
24th JCAART 2009 Conference24th JCAART 2009 Conference
24th JCAART 2009 Conference
 
SensorBand
SensorBandSensorBand
SensorBand
 
Sensorless sensing with wi fi
Sensorless sensing with wi fiSensorless sensing with wi fi
Sensorless sensing with wi fi
 
Cuestionario resuelto
Cuestionario resueltoCuestionario resuelto
Cuestionario resuelto
 
Wireless black box using mems accelerometer and gps tracking
Wireless black box using mems accelerometer and gps trackingWireless black box using mems accelerometer and gps tracking
Wireless black box using mems accelerometer and gps tracking
 
Android Emergency Alert with Fall Detection
Android Emergency Alert with Fall DetectionAndroid Emergency Alert with Fall Detection
Android Emergency Alert with Fall Detection
 

Último

Basic Building Blocks of Internet of Things.
Basic Building Blocks of Internet of Things.Basic Building Blocks of Internet of Things.
Basic Building Blocks of Internet of Things.YounusS2
 
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...Aggregage
 
COMPUTER 10: Lesson 7 - File Storage and Online Collaboration
COMPUTER 10: Lesson 7 - File Storage and Online CollaborationCOMPUTER 10: Lesson 7 - File Storage and Online Collaboration
COMPUTER 10: Lesson 7 - File Storage and Online Collaborationbruanjhuli
 
Using IESVE for Loads, Sizing and Heat Pump Modeling to Achieve Decarbonization
Using IESVE for Loads, Sizing and Heat Pump Modeling to Achieve DecarbonizationUsing IESVE for Loads, Sizing and Heat Pump Modeling to Achieve Decarbonization
Using IESVE for Loads, Sizing and Heat Pump Modeling to Achieve DecarbonizationIES VE
 
AI You Can Trust - Ensuring Success with Data Integrity Webinar
AI You Can Trust - Ensuring Success with Data Integrity WebinarAI You Can Trust - Ensuring Success with Data Integrity Webinar
AI You Can Trust - Ensuring Success with Data Integrity WebinarPrecisely
 
Comparing Sidecar-less Service Mesh from Cilium and Istio
Comparing Sidecar-less Service Mesh from Cilium and IstioComparing Sidecar-less Service Mesh from Cilium and Istio
Comparing Sidecar-less Service Mesh from Cilium and IstioChristian Posta
 
Salesforce Miami User Group Event - 1st Quarter 2024
Salesforce Miami User Group Event - 1st Quarter 2024Salesforce Miami User Group Event - 1st Quarter 2024
Salesforce Miami User Group Event - 1st Quarter 2024SkyPlanner
 
OpenShift Commons Paris - Choose Your Own Observability Adventure
OpenShift Commons Paris - Choose Your Own Observability AdventureOpenShift Commons Paris - Choose Your Own Observability Adventure
OpenShift Commons Paris - Choose Your Own Observability AdventureEric D. Schabell
 
Connector Corner: Extending LLM automation use cases with UiPath GenAI connec...
Connector Corner: Extending LLM automation use cases with UiPath GenAI connec...Connector Corner: Extending LLM automation use cases with UiPath GenAI connec...
Connector Corner: Extending LLM automation use cases with UiPath GenAI connec...DianaGray10
 
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...UbiTrack UK
 
Linked Data in Production: Moving Beyond Ontologies
Linked Data in Production: Moving Beyond OntologiesLinked Data in Production: Moving Beyond Ontologies
Linked Data in Production: Moving Beyond OntologiesDavid Newbury
 
Introduction to Matsuo Laboratory (ENG).pptx
Introduction to Matsuo Laboratory (ENG).pptxIntroduction to Matsuo Laboratory (ENG).pptx
Introduction to Matsuo Laboratory (ENG).pptxMatsuo Lab
 
Building Your Own AI Instance (TBLC AI )
Building Your Own AI Instance (TBLC AI )Building Your Own AI Instance (TBLC AI )
Building Your Own AI Instance (TBLC AI )Brian Pichman
 
IESVE Software for Florida Code Compliance Using ASHRAE 90.1-2019
IESVE Software for Florida Code Compliance Using ASHRAE 90.1-2019IESVE Software for Florida Code Compliance Using ASHRAE 90.1-2019
IESVE Software for Florida Code Compliance Using ASHRAE 90.1-2019IES VE
 
Bird eye's view on Camunda open source ecosystem
Bird eye's view on Camunda open source ecosystemBird eye's view on Camunda open source ecosystem
Bird eye's view on Camunda open source ecosystemAsko Soukka
 
Anypoint Code Builder , Google Pub sub connector and MuleSoft RPA
Anypoint Code Builder , Google Pub sub connector and MuleSoft RPAAnypoint Code Builder , Google Pub sub connector and MuleSoft RPA
Anypoint Code Builder , Google Pub sub connector and MuleSoft RPAshyamraj55
 
How Accurate are Carbon Emissions Projections?
How Accurate are Carbon Emissions Projections?How Accurate are Carbon Emissions Projections?
How Accurate are Carbon Emissions Projections?IES VE
 
VoIP Service and Marketing using Odoo and Asterisk PBX
VoIP Service and Marketing using Odoo and Asterisk PBXVoIP Service and Marketing using Odoo and Asterisk PBX
VoIP Service and Marketing using Odoo and Asterisk PBXTarek Kalaji
 

Último (20)

Basic Building Blocks of Internet of Things.
Basic Building Blocks of Internet of Things.Basic Building Blocks of Internet of Things.
Basic Building Blocks of Internet of Things.
 
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
The Data Metaverse: Unpacking the Roles, Use Cases, and Tech Trends in Data a...
 
COMPUTER 10: Lesson 7 - File Storage and Online Collaboration
COMPUTER 10: Lesson 7 - File Storage and Online CollaborationCOMPUTER 10: Lesson 7 - File Storage and Online Collaboration
COMPUTER 10: Lesson 7 - File Storage and Online Collaboration
 
201610817 - edge part1
201610817 - edge part1201610817 - edge part1
201610817 - edge part1
 
Using IESVE for Loads, Sizing and Heat Pump Modeling to Achieve Decarbonization
Using IESVE for Loads, Sizing and Heat Pump Modeling to Achieve DecarbonizationUsing IESVE for Loads, Sizing and Heat Pump Modeling to Achieve Decarbonization
Using IESVE for Loads, Sizing and Heat Pump Modeling to Achieve Decarbonization
 
AI You Can Trust - Ensuring Success with Data Integrity Webinar
AI You Can Trust - Ensuring Success with Data Integrity WebinarAI You Can Trust - Ensuring Success with Data Integrity Webinar
AI You Can Trust - Ensuring Success with Data Integrity Webinar
 
Comparing Sidecar-less Service Mesh from Cilium and Istio
Comparing Sidecar-less Service Mesh from Cilium and IstioComparing Sidecar-less Service Mesh from Cilium and Istio
Comparing Sidecar-less Service Mesh from Cilium and Istio
 
Salesforce Miami User Group Event - 1st Quarter 2024
Salesforce Miami User Group Event - 1st Quarter 2024Salesforce Miami User Group Event - 1st Quarter 2024
Salesforce Miami User Group Event - 1st Quarter 2024
 
OpenShift Commons Paris - Choose Your Own Observability Adventure
OpenShift Commons Paris - Choose Your Own Observability AdventureOpenShift Commons Paris - Choose Your Own Observability Adventure
OpenShift Commons Paris - Choose Your Own Observability Adventure
 
20230104 - machine vision
20230104 - machine vision20230104 - machine vision
20230104 - machine vision
 
Connector Corner: Extending LLM automation use cases with UiPath GenAI connec...
Connector Corner: Extending LLM automation use cases with UiPath GenAI connec...Connector Corner: Extending LLM automation use cases with UiPath GenAI connec...
Connector Corner: Extending LLM automation use cases with UiPath GenAI connec...
 
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
UWB Technology for Enhanced Indoor and Outdoor Positioning in Physiological M...
 
Linked Data in Production: Moving Beyond Ontologies
Linked Data in Production: Moving Beyond OntologiesLinked Data in Production: Moving Beyond Ontologies
Linked Data in Production: Moving Beyond Ontologies
 
Introduction to Matsuo Laboratory (ENG).pptx
Introduction to Matsuo Laboratory (ENG).pptxIntroduction to Matsuo Laboratory (ENG).pptx
Introduction to Matsuo Laboratory (ENG).pptx
 
Building Your Own AI Instance (TBLC AI )
Building Your Own AI Instance (TBLC AI )Building Your Own AI Instance (TBLC AI )
Building Your Own AI Instance (TBLC AI )
 
IESVE Software for Florida Code Compliance Using ASHRAE 90.1-2019
IESVE Software for Florida Code Compliance Using ASHRAE 90.1-2019IESVE Software for Florida Code Compliance Using ASHRAE 90.1-2019
IESVE Software for Florida Code Compliance Using ASHRAE 90.1-2019
 
Bird eye's view on Camunda open source ecosystem
Bird eye's view on Camunda open source ecosystemBird eye's view on Camunda open source ecosystem
Bird eye's view on Camunda open source ecosystem
 
Anypoint Code Builder , Google Pub sub connector and MuleSoft RPA
Anypoint Code Builder , Google Pub sub connector and MuleSoft RPAAnypoint Code Builder , Google Pub sub connector and MuleSoft RPA
Anypoint Code Builder , Google Pub sub connector and MuleSoft RPA
 
How Accurate are Carbon Emissions Projections?
How Accurate are Carbon Emissions Projections?How Accurate are Carbon Emissions Projections?
How Accurate are Carbon Emissions Projections?
 
VoIP Service and Marketing using Odoo and Asterisk PBX
VoIP Service and Marketing using Odoo and Asterisk PBXVoIP Service and Marketing using Odoo and Asterisk PBX
VoIP Service and Marketing using Odoo and Asterisk PBX
 

I fall ppt

  • 1. Done by Amit Kumar Keshri Adil Mateen Khan Aditya Prakash Rao Aditya Raj
  • 2. What is ANDROID? A mobile OS initially developed by Android Inc. based upon a modified version of linux. Consists of Java apps running on Java based OO application framework. Developed by Open Handset Alliance in partnership with Google. Versions of android: a) Android 1.5 b) Android 1.6 c) Android 2.1 d) Android 2.2 (Android FROYO)- most used version.
  • 3. We propose a low priced system that is well suited to all the requirements by using existing mainstream technologies that are reliable. Our approach is to use fasting growing device like programmable cellular phone. Reasons for using android cell phone:  Cost reduction.  Integrated hardware.  Cell phones are discrete than a dedicated monitor device  To limit false positives we implement several fall detection algorithms and two stages of communication
  • 4. Background User response service for detection by detecting fall using alerting user to accelerometer respond Timer to wait for Reset ifall If the user responds user response application If the user doesn’t respond Send emergency message to the care Send message to authority social contacts set by the user. Wait for people to respond
  • 5. iFall runs a inconspicuously as possible while using limited resources. When the algorithm suspects a fall the service will wake up and interrupt the user. If the user responds, the previous activity is restored and iFall will sleep again. By only waking up the activity when a fall is suspected or requested by the user, we allow application to run on top of iFall while we minimize our memory consumption and user interaction.
  • 6. Activities of Daily Living(ADL) are normal activities such as walking and standing. The forces exerted during ADL are usually different than the forces during a fall. A fall typically starts with a short free fall period. This causes the acceleration’s amplitude to drop significantly below the 1G threshold.
  • 7. Reliability and reduced number of false positives mean greater adoption by emergency services. Our system provides a viable solution to increase fall detection among people. Using existing, mass marketed technologies will limit cost making it available to the majority of the public.
  • 8. Our system provides a viable solution to increase fall detection among people. Using existing, mass marketed technologies will limit cost making it available to the majority of the public. Implementing proven fall detection algorithms makes the system highly reliable. Reliability and reduced number of false positives mean greater adoption by emergency services. The importance of the cell phone in everyday life decreases the chances of being forgotten. Everyday interaction with the phone makes the interface more familiar to the user.
  • 9. A cell phone is also less intrusive than dedicated devices  The familiar interface, non-intrusiveness, and affordability leads to less rejection from users. By combining cheap hardware and open source software, we hope to provide a realistic answer to reducing the long-lie period for the elderly.