How does a trained classifier label a picture by its own?

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How does a trained classifier label a picture by its own? Let's say I have a training set, train it using the LDA classifier and it shows me the accuracy/similarities. How do I use this to apply on the picture I want to label?

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Image Analyst
Image Analyst il 28 Gen 2013
You have to do that in separate steps afterwards. Your classifier should give you some kinds of instructions for classifying pixels, for example, pixels darker than 130 are background, and pixels brighter than 130 are foreground.
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Lester Lim
Lester Lim il 29 Gen 2013
Thanks for the guidance, Im trying it now and might get back to you later.
Lester Lim
Lester Lim il 29 Gen 2013
Modificato: Lester Lim il 29 Gen 2013
Yup, calculated it to be 100+ GB. Pardon for being a newbie at this, but by running separately, do you mean this? Or should I put in as another GUI button?
data = importdata('Trial data4.mat');
features=data(:,1:end-1); %split data without labels
lable=data(:,end); %get the labels
trainSamples = im2double(features);%training samples
trainClasses = im2double(lable);%training labels
testSamples = im2double(features);%test samples
lableimage = reshape(handles.lableimage,[],1);
testClasses = im2double(handles.lableimage);%test labels
disp('GUI: trainSamples is')
class(trainSamples)
disp('GUI: testSamples is')
class(testSamples)
mLDA = LDA(trainSamples, trainClasses');
mLDA.Compute();
clear data
transformedTrainSamples = mLDA.Transform(trainSamples, 1);
transformedTestSamples = mLDA.Transform(testSamples, 1);
calculatedClasses = knnclassify(transformedTestSamples, transformedTrainSamples, trainClasses);
simmilarity = [];
for i = 1 : 1 : length(testClasses)
similarity(i) = (testClasses(i)==calculatedClasses(i));
end
accuracy = sum(similarity) / length(testClasses);
fprintf('Testing: Accuracy is: %f %%\n', accuracy*100);
data = importdata('Trial data5.mat');
features=data(:,1:end-1); %split data without labels
lable=data(:,end); %get the labels
trainSamples = im2double(features);%training samples
trainClasses = im2double(lable);%training labels
testSamples = im2double(features);%test samples
lableimage = reshape(handles.lableimage,[],1);
testClasses = im2double(handles.lableimage);%test labels
disp('GUI: trainSamples is')
class(trainSamples)
disp('GUI: testSamples is')
class(testSamples)
mLDA = LDA(trainSamples, trainClasses');
mLDA.Compute();
clear data
transformedTrainSamples = mLDA.Transform(trainSamples, 1);
transformedTestSamples = mLDA.Transform(testSamples, 1);
calculatedClasses = knnclassify(transformedTestSamples, transformedTrainSamples, trainClasses);
simmilarity = [];
for i = 1 : 1 : length(testClasses)
similarity(i) = (testClasses(i)==calculatedClasses(i));
end
accuracy = sum(similarity) / length(testClasses);
fprintf('Testing: Accuracy is: %f %%\n', accuracy*100);
guidata(hObject, handles);

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