用于多人检测的滑动窗口技术 [英] sliding window technique for multiple people detection

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本文介绍了用于多人检测的滑动窗口技术的处理方法,对大家解决问题具有一定的参考价值,需要的朋友们下面随着小编来一起学习吧!

问题描述

我正在开发用于检测人员的视频监控应用程序.目前我正在实现 HOG 描述符作为检测器.但是,我对滑动窗口技术有疑问.我的代码只能检测到一个人.我还使用 MexOpen CV 中的 Group Rectangles 来创建多个边界框.有人知道如何编写滑动窗口技术来检测多个对象吗?谢谢.

I am working on video surveillance application for detecting people. Currently I am implementing HOG descriptor as the detector. However, I have a problem regarding the sliding window technique. My code is only able to detect single person. I am using also Group Rectangles from MexOpen CV to creat multiple bounding boxes. Anybody has idea how to write sliding window technique to detect multiple object? Thank you.

      % Reading the image
      im = strcat ('C:UsersDocumentsMATLABHOGHOGimages16.bmp');
      im = imread (im);

      win_size= [64, 128];

      [lastRightCol lastRightRow d] = size(im);

      counter = 1;
      %% Scan the window by using sliding window object detection

      % this for loop scan the entire image and extract features for each sliding window
      % Loop on scales (based on size of the window)
      for s=1:0.5:3
          disp(strcat('s is',num2str(s)));
          X=win_size(1)*s;
          Y=win_size(2)*s;
          for y = 1:X/4:lastRightCol-Y
              for x = 1:Y/4:lastRightRow-X
                  p1 = [x,y];
                  p2 = [x+(X-1), y+(Y-1)];
                  po = [p1; p2] ;

                  % Croped image and scan it.
                  crop_px = [po(1,1) po(2,1)];
                  crop_py  = [po(1,2) po(2,2)];

                  topLeftRow = ceil(min(crop_px));
                  topLeftCol = ceil(min(crop_py));

                  bottomRightRow = ceil(max(crop_px));
                  bottomRightCol = ceil(max(crop_py));

                  cropedImage = img(topLeftCol:bottomRightCol,topLeftRow:bottomRightRow,:);

                  % Get the feature vector from croped image using HOG descriptor
                  featureVector{counter} = getHOGDescriptor(img);
                  boxPoint{counter} = [x,y,X,Y];
                  count = counter+1;
                  x = x+2;
               end
            end
         end

         label = ones(length(featureVector),1);
         P = cell2mat(featureVector);

         % each row of P' correspond to a window
         % classifying each window
         [~, predictions] = svmclassify(P', label,model); 


         % set the threshold for getting multiple detection
         % the threshold value is 0.7
         get_detect = predictions.*[predictions>0.6];

         % the the value after sorted
         [r,c,v]= find(get_detect);


         %% Creating the bounding box for detection 
         for ix=1:length(r)
             rects{ix}= boxPoint{r(ix)};
         end

         if (isempty(rects))
             rects2=[];
         else
             rects2 = cv.groupRectangles(rects,3,'EPS',0.35);
         end



         for i = 1:numel(rects2)
             rectangle('Position',[rects2{i}(1),rects2{i}(2),64,128], 'LineWidth',2,'EdgeColor','y');
         end

     end

推荐答案

我不确定你是否正确地测试了模型.这里你有一个完整的例子,这是主要代码对于滑动窗口:

I am not sure if you are testing the model correctly. Here you have a complete example, and this is the main code for sliding window:

topLeftRow = 1;
topLeftCol = 1;
[bottomRightCol bottomRightRow d] = size(im);

fcount = 1;

% this for loop scan the entire image and extract features for each sliding window
for y = topLeftCol:bottomRightCol-wSize(2)   
    for x = topLeftRow:bottomRightRow-wSize(1)
        p1 = [x,y];
        p2 = [x+(wSize(1)-1), y+(wSize(2)-1)];
        po = [p1; p2];
        img = imcut(po,im);     
        featureVector{fcount} = HOG(double(img));
        boxPoint{fcount} = [x,y];
        fcount = fcount+1;
        x = x+1;
    end
end

lebel = ones(length(featureVector),1);
P = cell2mat(featureVector);
% each row of P' correspond to a window
[~, predictions] = svmclassify(P',lebel,model); % classifying each window

[a, indx]= max(predictions);

这篇关于用于多人检测的滑动窗口技术的文章就介绍到这了,希望我们推荐的答案对大家有所帮助,也希望大家多多支持IT屋!

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