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MAIN INFORMATIONS about the Project
MEMBERS
Quentin Bitschené Anthony Da Mota Hugo Martinez
Title of the Project : Reconnaissance de profil de mouvements à partir de l'accéléromètre
Name of the members of the Group
- Firstname: Bitschené
- Lastname: Quentin
- Class: IHM
- Mail: bitschen@polytech.unice.fr
- Firstname: Da Mota
- Lastname: Anthony
- Class: IHM
- Mail: anthony.damota06@gmail.com
- Firstname: Martinez
- Lastname: Hugo
- Class: IHM
- Mail: hugo.83300@gmail.com
Equipments
- Model: HTC 8S
- Personal phone: NON
- IMEI: 353760058901069
Content of the Project
Abstract
This project consists in programming a Widows Phone application with C# using sensors and learning algorithm. We choosed the accelerometer as our sensor.
The main goal of our project is to detect 4 kind of movement :
- Static
- Walking
- Fast walking
- Running
To do that we will use the combination between the measures we can get from the accelerometer and the use of the K-means clustering algorithm on those measures.
The accelerometer allow us to get 3 measures : X, Y and Z. Those 3 values represent the acceleration in a three dimensions space. In the project we use the Accelerometer object which allows us to get all those informations, it's our API, and it comes from the namespace Microsoft.Devices.Sensors.
We want to get two clusters that allow us to determine an average of the amplitude and frequency of our movement. To do that we use the alglib library that contains an implementation of the Kmeans algorithm, that implementation is really easy to use and is entirely configurable (you can chose the number of dimension of your sample for example).You can find it at the following URL : http://www.alglib.net/. We use this algorithm to create two clusters which will help us to find out the movement's type.
It s the répartition of the points in those two clusters that permits to determine which kind of movement the user is doing. We determined.
We choosed to show the variation of the accelerometer to the user through two interface elements :
- Three textblocks to show the actual values
- Three vectors to show graphically the variations of those values
The user chose when he wants to start the record and when when to stop it with the start and stop button. When the user presses the start button, we begin to record. We store the accelerometer's value every 20 ms in an Array. Then when the user presses stop, we put all the data we got into the Kmeans algorithm configuration and then we execute it.
When the execution is finished, we show all clustering informations to the user in a Popup :
- number of points that have been recorded
- the repartition of the points between the two clusters
- the movement induced by the analysis of those informations
We didn't have time to, but we could associate the movement recognition with some actions in our application. We could for example make the elements of our interface bigger when the user is running to make it easier for him to use the application.
SOFTWARE PACKAGES of the Project
- README File
an README file to explain all you install from Visual Studio 2013 SP2 with the SDK WP8.0 or later, to deploy and execute your project on the Windows Phone
- Project zip file
add the zip file of the Project
- All required softwares
Put all the links and explanations to install and to configure required softwares, before your WP8.X C# project
HOW TO USE IT
here write step by step how to use your project you can add copies of screen in it
RESULTS
Write a summary of the main results of the project
CONSIGNES ET RAPPELS
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