Indian Journal of Science and Technology
Year: 2016, Volume: 9, Issue: 45, Pages: 1-7
E. Komagal*and B. Sarah Sweetlyn Christella
*Author for correspondence
E. Komagal Department of Electronics and Communication, Velammal College of Engineering and Technology, Madurai - 625009, Tamil Nadu, India; [email protected]
Video surveillance has become an increasing research field now a day. The fundamental step in video surveillance is the Moving object detection. Most of the works focused on background modeling in PTZ camera but still lacking under different positions and various illumination conditions. While the camera is on pan and sudden zoom, the pixel intensity of each position may vary and it cannot adapt the motions when the target is faraway or closer. This issues cause major problem in BackgroundModeling(BM).Objectives:Tosolvethisproblematexturebasedmethodadaptedtohandlegrey-scalevariation, rotation variation and various illumination conditions of the moving objects. Methodology/Analysis: Modified version of LBP, that combines the advantages of LBP and SIFT descriptor known as eXtended Centre Symmetric Local Binary Patterns XCS-LBP.FinallyGMM(GaussianMixtureModel)isusedfor segmenting the foregroundExtractionby theXCS-LBPdescriptor with similarity measure. Findings: Experimental result shows that the proposed method is robust to obtain foreground extraction with outstanding performance under various lighting conditions. Applications/Improvements: In this paper, proposed method can be used in variety of applications such as detection of objects under some climatic conditions like fog, smoke, dew, snow falling areas. Further improvements are made to remove shadows.
Keywords: Background Modeling, PTZ Camera, Segmentation
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