Object Classification in Videos—An Overview

In this article, we will discuss the classification of moving objects in videos. An overview of classical steps in video classification will be given and a particular attention will be given to classification in video surveillance since classification in this kind of systems is very important and plays a primary role in several functions such as event classification, speed control, classification of intrusions and so on. 

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