CVNov 13, 2018

Deep Neural Network Concepts for Background Subtraction: A Systematic Review and Comparative Evaluation

arXiv:1811.05255v1338 citations
Originality Synthesis-oriented
AI Analysis

It synthesizes advancements for researchers in computer vision, but is incremental as it reviews existing work rather than introducing new methods.

This paper provides a systematic review of deep neural network concepts for background subtraction in video analysis, showing that deep learning methods have achieved top performance on the CDnet 2014 dataset with a large gap over conventional approaches.

Conventional neural networks show a powerful framework for background subtraction in video acquired by static cameras. Indeed, the well-known SOBS method and its variants based on neural networks were the leader methods on the largescale CDnet 2012 dataset during a long time. Recently, convolutional neural networks which belong to deep learning methods were employed with success for background initialization, foreground detection and deep learned features. Currently, the top current background subtraction methods in CDnet 2014 are based on deep neural networks with a large gap of performance in comparison on the conventional unsupervised approaches based on multi-features or multi-cues strategies. Furthermore, a huge amount of papers was published since 2016 when Braham and Van Droogenbroeck published their first work on CNN applied to background subtraction providing a regular gain of performance. In this context, we provide the first review of deep neural network concepts in background subtraction for novices and experts in order to analyze this success and to provide further directions. For this, we first surveyed the methods used background initialization, background subtraction and deep learned features. Then, we discuss the adequacy of deep neural networks for background subtraction. Finally, experimental results are presented on the CDnet 2014 dataset.

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