I'm new to Matlab. I'm trying to apply PCA function(URL listed below)into my palm print recognition program to generate the eigenpalms. My palm print grey scale images dimension are 450*400. Before using it, I was trying to study these codes and add some codes to save the eigenvector as .mat file. Some of the %comments added by me for my self understanding.
After a few days of studying, I still unable to get the answers. I decided to ask for helps.I have a few questions to ask regarding this PCA.m.
What is the input of the "options" should be? of "PCA(data,details,options)" (is it an integer for reduced dimension? I was trying to figure out where is the "options" value passing, but still unable to get the ans. The msgbox of "h & h2", is to check the codes run until where. I was trying to use integer of 10, but the PCA.m processed dimension are 400*400.)
The "eigvector" that I save as ".mat" file is ready to perform Euclidean distance classifier with other eigenvector? (I'm thinking that eigvector is equal to eigenpalm, like in face recognition, the eigen faces. I was trying to convert the eigenvector matrix back to image, but the image after PCA process is in Black and many dots on it)
- In this function, there are two values that can be changed, which are MAX_MATRIX_SIZE set by 1600 and EIGVECTOR_RATIO set by 0.1%. May I know these values will affect the results? ( I was trying to play around with the values, but I cant see the different. My palm print image dimension is set by 450*400, so the Max_matrix_size should set at 180,000?)
** I hope you guys able to understand what I'm asking, please help, Thanks guys (=
Original Version : http://www.cad.zju.edu.cn/home/dengcai/Data/code/PCA.m
% Edited Version by me function [eigvector, eigvalue] = PCA(data,details,options) %PCA Principal Component Analysis % % Usage: % [eigvector, eigvalue] = PCA(data, options) % [eigvector, eigvalue] = PCA(data) % % Input: % data - Data matrix. Each row vector of fea is a data point. % fea = finite element analysis ????? % options.ReducedDim - The dimensionality of the reduced subspace. If 0, % all the dimensions will be kept. % Default is 0. % % Output: % eigvector - Each column is an embedding function, for a new % data point (row vector) x, y = x*eigvector % will be the embedding result of x. % eigvalue - The sorted eigvalue of PCA eigen-problem. % % Examples: % fea = rand(7,10); % options=; %store an empty matrix in options % options.ReducedDim=4; % [eigvector,eigvalue] = PCA(fea,4); % Y = fea*eigvector; % % version 3.0 --Dec/2011 % version 2.2 --Feb/2009 % version 2.1 --June/2007 % version 2.0 --May/2007 % version 1.1 --Feb/2006 % version 1.0 --April/2004 % % Written by Deng Cai (dengcai AT gmail.com) % if (~exist('options','var')) %A = exist('name','kind') % var = Checks only for variables. %http://www.mathworks.com/help/matlab/matlab_prog/symbol-reference.html#bsv2dx9-1 %The tilde "~" character is used in comparing arrays for unequal values, %finding the logical NOT of an array, %and as a placeholder for an input or output argument you want to omit from a function call. options = ; end h2 = msgbox('not yet'); ReducedDim = 0; if isfield(options,'ReducedDim') %tf = isfield(S, 'fieldname') h2 = msgbox('checked'); ReducedDim = options.ReducedDim; end [nSmp,nFea] = size(data); if (ReducedDim > nFea) || (ReducedDim <=0) ReducedDim = nFea; end if issparse(data) data = full(data); end sampleMean = mean(data,1); data = (data - repmat(sampleMean,nSmp,1)); [eigvector, eigvalue] = mySVD(data',ReducedDim); eigvalue = full(diag(eigvalue)).^2; if isfield(options,'PCARatio') sumEig = sum(eigvalue); sumEig = sumEig*options.PCARatio; sumNow = 0; for idx = 1:length(eigvalue) sumNow = sumNow + eigvalue(idx); if sumNow >= sumEig break; end end eigvector = eigvector(:,1:idx); end %dt get from C# program, user ID and name evFolder = 'ev\'; userIDName = details; %get ID and Name userIDNameWE = strcat(userIDName,'\');%get ID and Name with extension filePath = fullfile('C:\Users\***\Desktop\Data Collection\'); userIDNameFolder = strcat(filePath,userIDNameWE); %ID and Name folder userIDNameEVFolder = strcat(userIDNameFolder,evFolder);%EV folder in ID and Name Folder userIDNameEVFile = strcat(userIDNameEVFolder,userIDName); % EV file with ID and Name if ~exist(userIDNameEVFolder, 'dir') mkdir(userIDNameEVFolder); end newFile = strcat(userIDNameEVFile,'_1'); searchMat = strcat(newFile,'.mat'); if exist(searchMat, 'file') filePattern = strcat(userIDNameEVFile,'_'); D = dir([userIDNameEVFolder, '*.mat']); Num = length(D(not([D.isdir]))) Num=Num+1; fileName = [filePattern,num2str(Num)]; save(fileName,'eigvector'); else newFile = strcat(userIDNameEVFile,'_1'); save(newFile,'eigvector'); end