For human detection in video squences, I used opencv to extract the foreground based on edge detection, followed by some postprocessing methods. Then I found that human body is devided into some parts, for instance head and other parts are not connected. For that I used morphological operations to close them up. However, I found it is not too efficient as since I need several morphological operations to fill it for my case. So I am looking for some alternatie approaches. Could someone suggest me? I've searched for papers, and found some, but I don't have enough time to implement a new algorithm now. Thanks in advance.
The HOG person detector in OpenCV is really simple to implement and performs fairly acceptably when your person is upright, reasonable sized, and fairly unoccluded. It's definitely worth a look if you're just looking for something simple. There's also a GPU implementation available which is pretty quick.
There's example code for the CPU version in the sample
The other traditional approach would be to use a type of Viola-Jones cascade, OpenCV comes with a number of cascades trained for your use, one of which is an upperbody detector, another is a fullbody detector. There's an example of using these in the OpenCV tutorials here.