Detecting pedestrians on a Movement Feature Space (original) (raw)

2014, Pattern Recognition

This work aims at detecting pedestrians in surveillance video sequences. A pre-processing step detects motion regions on the image using a scene background model based on level lines, which generates a Movement Feature Space, and a family of oriented histogram descriptors. A cascade of boosted classifiers generates pedestrian hypotheses using this feature space. Then, a linear Support Vector Machine validates the hypotheses that are likeliest to contain a person. The combination of the three detection phases reduces false positives, preserving the majority of pedestrians. The system tests conducted in our dataset, which contains low-resolution pedestrians, achieved a maximum performance of 25.5 % miss rate with a rate of of 10 −1 false positives per image. This value is comparable to the best detection values for this kind of images. In addition, the processing time is between 2 and 6 fps on 640x480 pixel captures. This is therefore a fast and reliable pedestrian detector.