AUTOMATIC FAST VIDEO OBJECT DETECTION AND TRACKING ON VIDEO SURVEILLANCE SYSTEM
Journal: ICTACT Journal on Image and Video Processing (IJIVP) (Vol.3, No. 1)Publication Date: 2012-08-01
Authors : V. Arunachalam I. Sorimuthu V. Rajagopal; B. Sankaragomathi;
Page : 479-484
Keywords : Background Subtraction; Object Tracking; Principle Component Analysis; Spatio-Temporal Segmentation; MAP;
Abstract
This paper describes the advance techniques for object detection and tracking in video. Most visual surveillance systems start with motion detection. Motion detection methods attempt to locate connected regions of pixels that represent the moving objects within the scene; different approaches include frame-to-frame difference, background subtraction and motion analysis. The motion detection can be achieved by Principle Component Analysis (PCA) and then separate an objects from background using background subtraction. The detected object can be segmented. Segmentation consists of two schemes: one for spatial segmentation and the other for temporal segmentation. Tracking approach can be done in each frame of detected Object. Pixel label problem can be alleviated by the MAP (Maximum a Posteriori) technique.
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