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Feature Extraction from Accelerometer Data using Matlab

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I would like to extract statistical features such as min, max,magnitude, standard deviation, mean, correlation, energy from raw accelerometer (x,y, and z) data collected from smartphone accelerometer. Features are to be extracted from raw acceleration data using a window size of 512 samples with 256 samples overlapping between consecutive windows (sliding window with 50% overlap) using Matlab.
Here is my code which i have developed so far and i would appreciate if anyone could verify if its correct. Will also be very thankful if someone could highlight on sliding window portion for Matlab.
Thanks a lot in advance for your assistance.
if true
clear all
data = load ('user_1703.txt');
accX = data(:,3)/9.8;%3rd column of the CSV file is the values of Accelerometer X accY = data(:,4)/9.8;%4th column of the CSV file is the values of Accelerometer Y accZ = data(:,5)/9.8;%5th column of the CSV file is the values of Accelerometer Z %**************************************************************************
[m,n]=size(accX); acc = ones(1,m); %%************Initialization of the statistical values of the windows******% avgX=zeros(1,500); avgY=zeros(1,500); avgZ=zeros(1,500); avgACC=zeros(1,500); maxACC=-3*ones(1,500); %these -3 and 100 values are random values which makes the inital values look a lot different than the actual values minACC=-3*ones(1,500); maxX=100*ones(1,500); maxY=100*ones(1,500); maxZ=100*ones(1,500); minX=-100*ones(1,500); minY=-100*ones(1,500); minZ=-100*ones(1,500); stdX=zeros(1,500); stdY=zeros(1,500); stdZ=zeros(1,500); stdACC=zeros(1,500); XYcorr=zeros(1,500); XZcorr=zeros(1,500); YZcorr=zeros(1,500); energy=zeros(1,500); %************************************************************************** %************************************************************************** for i=1:m acc(i)=sqrt((accX(i)^2+accY(i)^2+accZ(i)^2)); end
i=1; j=1; windowsize=50; %*******In each iteration, statistical values of a window are calculated %and raw data(accX,accY,accZ) index is inceremented by windowsize/2 to %provide %50 overlapping*************************************************% while(i<=m-52) corrmatrix=corrcoef([accX(i:i+windowsize-1),accY(i:i+windowsize-1),accZ(i:i+windowsize-1)]); XYcorr(j)=corrmatrix(1,2); XZcorr(j)=corrmatrix(1,3); YZcorr(j)=corrmatrix(2,3);
avgX(j)=mean(accX(i:i+windowsize-1));
stdX(j)=std(accX(i:i+windowsize-1))
maxX(j)=max(accX(i:i+windowsize-1));
minX(j)=min(accX(i:i+windowsize-1));
avgY(j)=mean(accY(i:i+windowsize-1));
stdY(j)=std(accY(i:i+windowsize-1));
maxY(j)=max(accY(i:i+windowsize-1));
minY(j)=min(accY(i:i+windowsize-1));
avgZ(j)=mean(accZ(i:i+windowsize-1));
stdZ(j)=std(accZ(i:i+windowsize-1));
maxZ(j)=max(accZ(i:i+windowsize-1));
minZ(j)=min(accZ(i:i+windowsize-1));
avgACC(j)=mean(acc(i:i+windowsize-1));
stdACC(j)=std(acc(i:i+windowsize-1));
maxACC(j)=max(acc(i:i+windowsize-1));
minACC(j)=min(acc(i:i+windowsize-1));
energy(j)=sum(abs(fft(acc(i:i+windowsize-1))))/26; %
%Energy is defined as the normalized summation of absolute values of
%Discrete Fourier Transform of a windowed signal sequence
i=i+windowsize/2-1;
j=j+1;
end
%**************************************************************************
%This cell represents a matrix consisting of each row representing a
%window and each column representing the statistical attribute
%calculated above%
cell=[maxX.',minX.',avgX.',stdX.',maxY.',minY.',avgY.',stdY.',maxZ.',minZ.',avgZ.',stdZ.',maxACC.',minACC.',avgACC.',stdACC.',XYcorr.',XZcorr.',YZcorr.',energy.'];
%MATLAB has a built-in function to write the matrix given as input into a file of the format of CSV.
csvwrite('features.csv',cell);
end
  7 Comments
Muhammad Hammad Malik
Muhammad Hammad Malik on 18 Jan 2021
had you used this code, i want to get some understanding.thanks
Saif Aljanahi
Saif Aljanahi on 30 Mar 2021
Thanks man, this code really helped me, I'm so grateful.

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Answers (1)

Shrey Joshi
Shrey Joshi on 18 May 2022
you can start by using features provided in feature extraction mode of signal labeler app.
https://www.mathworks.com/help/signal/ug/extract-signal-features.html

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