Fast moving object detection method using temporal-spatial background model[J]. Journal of Image and Graphics, 2011, 16(6): 1002-1007. DOI: 10.11834/jig.20110616.
Moving objects extraction is a key part of video surveillance system. To improve the performance of moving objects detection method based on the Gaussian Mixture Model(GMM)
an iterative detection algorithm with adaptive partitioning block of pixels is proposed. It is based on the temporal-spatial background that the number of components is improved adaptively and the feature of areas extracted spatially is combined. With the spatial areas information
the algorithm decreases the number of small fake objects and reduces the fragmentation of objects that caused by all kinds of noise. Comparing with detection method based on single pixel
the proposed method would not almost impact the detected results when it reduces the algorithm computation obviously. The results show that the objects extracted by the proposed method with higher SNR and the processing time decreases 22% contrasting to traditional algorithm.