CVJan 11, 2019

Background Subtraction in Real Applications: Challenges, Current Models and Future Directions

arXiv:1901.03577v1301 citations
Originality Synthesis-oriented
AI Analysis

It addresses the disconnect between theoretical advancements and practical deployment in computer vision, but is incremental as it synthesizes existing knowledge rather than proposing new methods.

This survey paper examines the gap between background subtraction methods in research and their practical application in real-world scenarios like traffic surveillance, identifying key challenges and current models used.

Computer vision applications based on videos often require the detection of moving objects in their first step. Background subtraction is then applied in order to separate the background and the foreground. In literature, background subtraction is surely among the most investigated field in computer vision providing a big amount of publications. Most of them concern the application of mathematical and machine learning models to be more robust to the challenges met in videos. However, the ultimate goal is that the background subtraction methods developed in research could be employed in real applications like traffic surveillance. But looking at the literature, we can remark that there is often a gap between the current methods used in real applications and the current methods in fundamental research. In addition, the videos evaluated in large-scale datasets are not exhaustive in the way that they only covered a part of the complete spectrum of the challenges met in real applications. In this context, we attempt to provide the most exhaustive survey as possible on real applications that used background subtraction in order to identify the real challenges met in practice, the current used background models and to provide future directions. Thus, challenges are investigated in terms of camera, foreground objects and environments. In addition, we identify the background models that are effectively used in these applications in order to find potential usable recent background models in terms of robustness, time and memory requirements.

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