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function [gist, param] = LMgist(D, HOMEIMAGES, param, HOMEGIST)
%
% [gist, param] = LMgist(D, HOMEIMAGES, param);
% [gist, param] = LMgist(filename, HOMEIMAGES, param);
% [gist, param] = LMgist(filename, HOMEIMAGES, param, HOMEGIST);
%
% For a set of images:
% gist = LMgist(img, [], param);
%
% When calling LMgist with a fourth argument it will store the gists in a
% new folder structure mirroring the folder structure of the images. Then,
% when called again, if the gist files already exist, it will just read
% them without recomputing them:
%
%   [gist, param] = LMgist(filename, HOMEIMAGES, param, HOMEGIST);
%   [gist, param] = LMgist(D, HOMEIMAGES, param, HOMEGIST);
% 
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Modeling the shape of the scene: a holistic representation of the spatial envelope
% Aude Oliva, Antonio Torralba
% International Journal of Computer Vision, Vol. 42(3): 145-175, 2001.

if nargin==4
    precomputed = 1;
    % get list of folders and create non-existing ones
    %listoffolders = {D(:).annotation.folder};

    %for i = 1:length(D);
    %    f{i} = D(i).annotation.folder;
    %end
    %[categories,b,class] = unique(f);
else
    precomputed = 0;
    HOMEGIST = '';
end

    
param.boundaryExtension = 32; % number of pixels to pad

if nargin<3
    % Default parameters
    param.imageSize = 128;
    param.orientationsPerScale = [8 8 8 8];
    param.numberBlocks = 4;
    param.fc_prefilt = 4;
    param.G = createGabor(param.orientationsPerScale, param.imageSize1+2*param.boundaryExtension);
else
    if ~isfield(param, 'G')
        param.G = createGabor(param.orientationsPerScale, param.imageSize+2*param.boundaryExtension);
    end
end

% Precompute filter transfert functions (only need to do this once, unless
% image size is changes):
Nfeatures = size(param.G,3)*param.numberBlocks^2;

if isstruct(D)
    % [gist, param] = LMgist(D, HOMEIMAGES, param);
    Nscenes = length(D);
    typeD = 1;
end
if iscell(D)
    % [gist, param] = LMgist(filename, HOMEIMAGES, param);
    Nscenes = length(D);
    typeD = 2;
end
if isnumeric(D)
    % [gist, param] = LMgist(img, HOMEIMAGES, param);
    Nscenes = size(D,4);
    typeD = 3;
end

% Loop: Compute gist features for all scenes
gist = zeros([Nscenes Nfeatures], 'single');
for n = 1:Nscenes
    g = [];
    todo = 1;
    
    % if gist has already been computed, just read the file
    if precomputed==1
        filegist = fullfile(HOMEGIST, D(n).annotation.folder, [D(n).annotation.filename(1:end-4) '.mat']);
        if exist(filegist, 'file')
            load(filegist, 'g');
            todo = 0;
        end
    end
    
    % otherwise compute gist
    if todo==1
        disp([n Nscenes])

        % load image
        try
            switch typeD
                case 1
                    img = LMimread(D, n, HOMEIMAGES);
                case 2
                    img = imread(fullfile(HOMEIMAGES, D{n}));
                case 3
                    img = D(:,:,:,n);
            end
        catch
            disp(D(n).annotation.folder)
            disp(D(n).annotation.filename)
            rethrow(lasterror)
        end
        
        img = single(img); %jhhays
        if(size(img,3) > 1) %jhhays
            img = rgb2gray(img);
        end

        % resize and crop image to make it square
        %img = imresizecrop(img, param.imageSize, 'bilinear');
        img = imresize(img, param.imageSize, 'bilinear'); %jhhays

        % scale intensities to be in the range [0 255]
        img = img-min(img(:));
        img = 255*img/max(img(:));
        
        if Nscenes>1
            imshow(uint8(img))
            title(n)
        end

        % prefiltering: local contrast scaling
        %output    = prefilt(img, param.fc_prefilt);
        output = img;

        % get gist:
        g = gistGabor(output, param);
        
        % save gist if a HOMEGIST file is provided
        if precomputed
            mkdir(fullfile(HOMEGIST, D(n).annotation.folder))
            save (filegist, 'g')
        end
    end
    
    gist(n,:) = g;
    drawnow
end

function output = prefilt(img, fc)
% ima = prefilt(img, fc);
% fc  = 4 (default)
% 
% Input images are double in the range [0, 255];
% You can also input a block of images [ncols nrows 3 Nimages]
%
% For color images, normalization is done by dividing by the local
% luminance variance.

if nargin == 1
    fc = 4; % 4 cycles/image
end

w = 5;
s1 = fc/sqrt(log(2));

% Pad images to reduce boundary artifacts
img = log(img+1);
img = padarray(img, [w w], 'symmetric');
[sn, sm, c, N] = size(img);
n = max([sn sm]);
n = n + mod(n,2);
img = padarray(img, [n-sn n-sm], 'symmetric','post');

% Filter
[fx, fy] = meshgrid(-n/2:n/2-1);
gf = fftshift(exp(-(fx.^2+fy.^2)/(s1^2)));
gf = repmat(gf, [1 1 c N]);

% Whitening
output = img - real(ifft2(fft2(img).*gf));
clear img

% Local contrast normalization
localstd = repmat(sqrt(abs(ifft2(fft2(mean(output,3).^2).*gf(:,:,1,:)))), [1 1 c 1]); 
output = output./(.2+localstd);

% Crop output to have same size than the input
output = output(w+1:sn-w, w+1:sm-w,:,:);



function g = gistGabor(img, param)
% 
% Input:
%   img = input image (it can be a block: [nrows, ncols, c, Nimages])
%   param.w = number of windows (w*w)
%   param.G = precomputed transfer functions
%
% Output:
%   g: are the global features = [Nfeatures Nimages], 
%                    Nfeatures = w*w*Nfilters*c

img = single(img);

w = param.numberBlocks;
G = param.G;
be = param.boundaryExtension;

if ndims(img)==2
    c = 1; 
    N = 1;
    [nrows ncols c] = size(img);
end
if ndims(img)==3
    [nrows ncols c] = size(img);
    N = c;
end
if ndims(img)==4
    [nrows ncols c N] = size(img);
    img = reshape(img, [nrows ncols c*N]);
    N = c*N;
end

[ny nx Nfilters] = size(G);
W = w*w;
g = zeros([W*Nfilters N]);

% pad image
img = padarray(img, [be be], 'symmetric');

img = single(fft2(img)); 
k=0;
for n = 1:Nfilters
    ig = abs(ifft2(img.*repmat(G(:,:,n), [1 1 N]))); 
    ig = ig(be+1:ny-be, be+1:nx-be, :);
    
    v = downN(ig, w);
    g(k+1:k+W,:) = reshape(v, [W N]);
    k = k + W;
    drawnow
end

if c == 3
    % If the input was a color image, then reshape 'g' so that one column
    % is one images output:
    g = reshape(g, [size(g,1)*3 size(g,2)/3]);
end


function y=downN(x, N)
% 
% averaging over non-overlapping square image blocks
%
% Input
%   x = [nrows ncols nchanels]
% Output
%   y = [N N nchanels]

nx = fix(linspace(0,size(x,1),N+1));
ny = fix(linspace(0,size(x,2),N+1));
y  = zeros(N, N, size(x,3));
for xx=1:N
  for yy=1:N
    v=mean(mean(x(nx(xx)+1:nx(xx+1), ny(yy)+1:ny(yy+1),:),1),2);
    y(xx,yy,:)=v(:);
  end
end