Posture Recognition with G-Sensors on Smart Phones

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Posture Recognition with G-Sensors on Smart Phones. Hui-Huang Hsu , Kang-Chun Tsai Dept of Computer Science and Information Engineering Tamkang University Zixue Cheng, Tongjun Huang School of Computer Science and Engineering University of Aizu. - PowerPoint PPT Presentation

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Posture Recognition with

G-Sensors on Smart Phones

2012 15th International Conference on Network-Based Information Systems

Professor: Yih-Ran SheuStudent : Chan-jung WU

Hui-Huang Hsu , Kang-Chun TsaiDept of Computer Science and Information Engineering Tamkang

University

Zixue Cheng, Tongjun HuangSchool of Computer Science and Engineering University of Aizu

Digital Object Identifier :10.1109/NBiS.2012.135Date of Conference: 26-28 Sept. 2012Page(s):588 - 591

Abstract Introduction Posture Recognition App Experimental Results and Implementation Conclusion and Future Work References

Outline

Using smart phone to recognize the posture of the user. The app can record the postures of the user for the whole day and estimate the burned calories accordingly.

Abstract

Weight control is a major issue in health management since overweighting is a very serious social problem in developed countries

Introduction 1/3

Use the signals from G-sensor in the mobile phone to identify the postures of the user

Introduction 2/3

Introduction 3/3

System architecture

Example posture signals

Posture Recognition App 1/3

Artificial Neural Networks(ANN)

Posture Recognition App 2/3

sampling period of 0.04seconds

Artificial Neural Networks

Posture Recognition App 2/3

Posture Recognition App 2/3

摩托車

腳踏車

開車

搭車

Hidden note

It is basically the weight (in Kg) of the user times the duration of the posture state (in hour) and a posture factor

Posture Recognition App 3/3

Calorie consumption

Experimental Results and Implementation 1/3

The sampling rate is 5 times per seconds. There are totally 20445 data points in the posture dataset

Experimental Results and Implementation 2/3

The overall classification accuracy is 97 percent

Experimental Results and Implementation 3/3

The user can be aware of his/her daily activities in a better way and possibly move more to enjoy a healthier life.

The user’s activity signals are collected and used to train a personalized neural network model for posture classification. This should be able to make the classification accuracy nearly perfect.

Conclusion and Future Work

[1]http://www.airitilibrary.com/Publication/alDetailedMesh?docid=16086961 -200812-200907210037-200907210037-286-298[2] http://developer.android.com/about/index.html[3] http://developer.android.com/tools/sdk/eclipse-adt.html[4] http://www.csie.nctu.edu.tw/~kensl/AIrpt.html[5] http://developer.android.com/guide/components/index.html

REFERENCES

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