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I need to detect a human in a video in realtime. I guess its not much different from detecting a human in a static image (except that the video image is usually much lower resolution). Can you guys point me in some direction? I don't have no experience in the computer vision field, so I any link, article, video that could give me a introduction would be useful. Any help is appreciated.

Thanks.

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2 Answers 2

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One of the most famous methods for human detection is the Histogram of Oriented Gradients (HoG) detector. This has been implemented in the OpenCV library and should be a good starting point.

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  • The camera will be positioned in the ceilling (I forgot to mention...). Will this method still work? Feb 22, 2013 at 16:38
  • Hmm, I guess if they get right underneath the camera the method will not work so well. However, you could run some tests on the detection rate for different positions around the camera and define a cone where the accuracy is unacceptably low. As you are working with video you could detect targets that are outside this region using a human detection algorithm and then use a Kalman Filter to track them as a simple blob shape if they enter the region.
    – Max Allan
    Feb 22, 2013 at 17:01
  • Hi @Max. I want to know more about people tracking. Let's say I have a realtime reliable way to detect humans. Let's say I detect humans at a very low rate in my video stream. So, I cannot say that the rectangle in frame A points to the same person the rectangle in frame B points to just because the two rectangles are close together. Is there something I can use to tell if two persons are the same on distinct frames even if the person moves a lot from one frame to another? Mar 12, 2013 at 12:04
  • @DaniloCarvalho This sounds pretty tough. Trajectory/motion modelling might give you a rough guess as to where they will be in the next frame but initializing this will be tough (perhaps you could try to figure out the direction they are moving from the direction they are facing in the first frame and refine from there). Also tracking based on the colors of clothes/skin/hair might be an option if the video feed is in color. The condensation algorithm might be a good place to start for this type of tracking.
    – Max Allan
    Mar 12, 2013 at 15:11
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One way is to use HOG features. This first method seems to be time-consuming nevertheless it is a very successful human detection algorithm. The second way is to optimize the HOG algorithm by resizing the image this method results in more than two times increase in detecting humans in a image while scarifying in the detection accuracy mainly when persons are on the edges. The third way consists in adapting Haar feature for human detection this solution significantly reduces computational cost in spite of the precision. To evaluate the proposed method, we have established a top-view human database. Experimental results have demonstrated the effectiveness and efficiency of the proposed algorithm which gives a good ratio accuracy/time execution.

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