New Trends on Moving Object Detection in Video Images Captured by a moving Camera: A Survey

Abstract : This paper presents a survey on the latest methods of moving object detection in video sequences captured by a moving camera. Although many researches and excellent works have reviewed the methods of object detection and background subtraction for a fixed camera, there is no survey which presents a complete review of the existing different methods in the case of moving camera. Most methods in this field can be classified into four categories: modelling based background subtraction, trajectory classification, low rank and sparse matrix decomposition, and object tracking. We discuss in details each category and present the main methods which proposed improvements in the general concept of the techniques. We also present challenges and main concerns in this field as well as performance metrics and some benchmark databases available to evaluate the performance of different moving object detection algorithms.
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Computer Science Review, Elsevier, 2018
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Mehran Yazdi, Thierry Bouwmans. New Trends on Moving Object Detection in Video Images Captured by a moving Camera: A Survey. Computer Science Review, Elsevier, 2018. 〈hal-01724322〉

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