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function new2
close all;
clear all;
clc;
num_of_hidden_layers=3;
num_of_feature_maps=6;
filter_size=5;
minibatch_size=[6 6];
training_iterations=1000;
input_image=norm01(imread('drosophila.tif'));
label_image=norm01(imread('drosophila_contours.tif'));
flag=1;

nonlinearity=inline('1./(1+exp(-x))'); % sigmoid function
derivative_of_nonlinearity=inline('x.*(1-x)'); % derivative of sigmoid
lossfunction=inline('(x-y).^2');
derivative_of_lossfunction=inline('x-y'); % derivative of squared error

% store the number of feature maps in each layer
num_of_maps_in_layer{1}=1; % first layer encodes input, assume a single input map
for i=1:num_of_hidden_layers
    num_of_maps_in_layer{i+1}=num_of_feature_maps; % hidden layers, each with the same number number of feature maps
end
num_of_maps_in_layer{num_of_hidden_layers+2}=6; % final layer encodes output, assume a single output map

% initialize filter weights, biases, learning rates
for l=2:num_of_hidden_layers+2
    for feature_map=1:num_of_maps_in_layer{l}
        W{l, feature_map}=0.1*single(randn(filter_size, filter_size, num_of_maps_in_layer{l-1})); % other hidden layers
        B{l, feature_map}=0.1*randn;
        etaW{l}=0.1; etaB{l}=0.1;
    end
end

% if there are many hidden layers, it is better to have a very small learning rate at the final layer
if(num_of_hidden_layers>1)
    etaW{num_of_hidden_layers+2}=0.001;
    etaB{num_of_hidden_layers+2}=0.001;
end

% due to the effect of multiple valid convolutions, we have to compute the size of input patch that will generate the desired size
% of output patch
minibatch_input_size=minibatch_size+(2*(floor(filter_size/2))*(num_of_hidden_layers+1));
err=[];
current_output=zeros(size(input_image),'single');

global d;
d=size(W,1);
for n=1:training_iterations

    % select a random input patch and its corresponding labels
    y=ceil(rand*(size(input_image,1)-minibatch_input_size(1)))+floor(minibatch_input_size(1)/2);
    x=ceil(rand*(size(input_image,2)-minibatch_input_size(2)))+floor(minibatch_input_size(2)/2);

    training_image_coords=[y-floor(minibatch_input_size(1)/2)+1:y+floor(minibatch_input_size(1)/2);
        x-floor(minibatch_input_size(1)/2)+1:x+floor(minibatch_input_size(1)/2)];

    label_image_coords=[y-floor(minibatch_size(1)/2)+1:y+floor(minibatch_size(1)/2);
        x-floor(minibatch_size(1)/2)+1:x+floor(minibatch_size(1)/2)];

    training_input_patch=input_image(training_image_coords(1,:), training_image_coords(2,:));
    training_label_patch=label_image(label_image_coords(1,:), label_image_coords(2,:));

    activity=fwd_pass(W, B, num_of_maps_in_layer, nonlinearity, training_input_patch);
    sensitivity=bkwd_pass(W, B, num_of_maps_in_layer, derivative_of_nonlinearity, derivative_of_lossfunction, activity, training_label_patch);

    % compute gradient updates using cost function
    if(flag)
        disp('hai')
        num_of_maps_in_layer{6}=2;
        l=num_of_hidden_layers+3;
        for feature_map=1:num_of_maps_in_layer{l}
            level{l}=graythresh(activity{l-1}(:,:,feature_map));
            BW1=uint8(im2bw(activity{l-1}(:,:,feature_map),level{l}));
            W{l,1}=edge(BW1,'sobel','horizontal');
            B{l, feature_map}=0.1*randn;
            activity{l}(:,:,feature_map)=nonlinearity(convn(activity{l-1}, W{l, 1}, 'valid') + B{l,feature_map});
            imshow(activity{l}(:,:,feature_map))
            W{l,2}=edge(BW1,'sobel','vertical');
            activity{l}(:,:,feature_map)=nonlinearity(convn(activity{l-1}, W{l, 2}, 'valid') + B{l,feature_map});
            figure,imshow(activity{l}(:,:,feature_map))

        end

        l=size(W,1)-1;

        %    for feature_map=1:num_of_maps_in_layer{l}
        %     canny(activity{l-1}(:,:,feature_map),3,1,.15);

        flag=0;
    end

    [gradientW, gradientB]=gradient_pass(W, B, num_of_maps_in_layer, activity, sensitivity);

    % update model using gradient
    for l=2:num_of_hidden_layers+2
        for feature_map=1:num_of_maps_in_layer{size(W,1)}
            W{l, feature_map}=W{l, feature_map}+(gradientW{l, feature_map}*etaW{l});
            B{l, feature_map}=B{l, feature_map}+(gradientB{l, feature_map}*etaB{l});
        end
    end

    % status and statistics
    current_output(label_image_coords(1,:),label_image_coords(2,:))=activity{d}(:,:,feature_map);
    err(n)= sum(sum(lossfunction(training_label_patch, activity{d}(:,:,feature_map))))/numel(training_label_patch);

    if(rem(n,100)==0)
        subplot(1,3,1), plot(convn(err,ones([1 min(length(err), 100)]),'valid')/100);
        title(['training error; iteration number = ', num2str(n)]);
        subplot(1,3,2), imagesc(input_image);, title('input image');
        if(rem(n,1000)==0)
            fprintf('computing forward pass on entire image...');
            test_img_activity=fwd_pass(W,B, num_of_maps_in_layer, nonlinearity, input_image);
            fprintf('done.\n')
            subplot(1,3,3), imagesc(test_img_activity{size(W,1)},[0 1]);
            title(['output from iteration number = ', num2str(n)]);
        end
        drawnow;
    end
end
end

function [activity]=fwd_pass(W, B, num_of_maps_in_layer, nonlinearity, input)
global d;
activity{1}(:,:,1)=input;
for l=2:d
    for feature_map=1:num_of_maps_in_layer{l}
        activity{l}(:,:,feature_map)=nonlinearity(convn(activity{l-1}, W{l, feature_map}, 'valid') + B{l,feature_map});
    end
end

end

please help to correct this error

share|improve this question
6  
How can we correct the error if you don't tell us what it is? – gnovice Apr 6 '11 at 16:02
    
please help us understand your problem. – Shawn Chin Apr 6 '11 at 16:05
    
it is a program to detecting edge in the last layer of neural network.but the edge detection is done only once.pls help me.tomorrow i have to submit.also if i add last layer,index exceed matrix dimension is the error – user1234 Apr 6 '11 at 16:08
1  
Please be more specific. Tell us how you attempted to run this code, what you hoped it would do, and what happened instead. If there is an error message, show us the complete error message including line numbers etc. You are not likely to get much help if you just give us 100+ lines of code and say "there's a bug somewhere here; please find it for me". – Gareth McCaughan Apr 6 '11 at 17:08
    
Also, though I'm loath to have 133 lines of code turn into 200 lines, I notice that the code calls functions called bkwd_pass and gradient_pass whose definitions are not given here. – Gareth McCaughan Apr 6 '11 at 17:11

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