A Review on Object Detection in Video Processing

This paper initially proposes a technique for identifying a moving object in a video clip of stationary background for real time content based multimedia communication systems [2]. It deals with identifying an object of interest. Dynamic objects are identified using both background elimination and background registration techniques. Post processing techniques are applied to reduce the noise. The background elimination method uses concept of least squares to compare the accuracies of the current algorithm with the already existing algorithms. The background registration method uses background subtraction which improves the adaptive background mixture model and makes the system learn faster and more accurately, as well as adapt effectively to changing environments.

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[3]  Xiao Chen,et al.  Application of Matlab in Moving Object Detecting Algorithm , 2008, 2008 International Seminar on Future BioMedical Information Engineering.

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