Title
Deep Neural Network Concepts for Background Subtraction: A Systematic Review and Comparative Evaluation.
Abstract
Conventional neural networks have been demonstrated to be a powerful framework for background subtraction in video acquired by static cameras. Indeed, the well-known Self-Organizing Background Subtraction (SOBS) method and its variants based on neural networks have long been the leading methods on the large-scale CDnet 2012 dataset during a long time. Convolutional neural networks, which are used in deep learning, have been recently and excessively employed for background initialization, foreground detection, and deep learned features. The top background subtraction methods currently used in CDnet 2014 are based on deep neural networks, and have demonstrated a large performance improvement in comparison to conventional unsupervised approaches based on multi-feature or multi-cue strategies. Furthermore, since the seminal work of Braham and Van Droogenbroeck in 2016, a large number of studies on convolutional neural networks applied to background subtraction have been published, and a continual gain of performance has been achieved. 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. To do so, we first surveyed the background initialization and background subtraction methods based on deep neural networks concepts, and also deep learned features. We then discuss the adequacy of deep neural networks for the task of background subtraction. Finally, experimental results are presented for the CDnet 2014 dataset.
Year
DOI
Venue
2018
10.1016/j.neunet.2019.04.024
Neural Networks
Keywords
Field
DocType
Background subtraction,Restricted Boltzmann machines,Auto-encoders networks,Convolutional neural networks,Generative adversarial networks
Background subtraction,Convolutional neural network,Foreground detection,Artificial intelligence,Deep learning,Initialization,Artificial neural network,Machine learning,Mathematics,Deep neural networks,Performance improvement
Journal
Volume
Issue
ISSN
117
1
0893-6080
Citations 
PageRank 
References 
17
0.67
113
Authors
4
Search Limit
100113
Name
Order
Citations
PageRank
Thierry Bouwmans1100743.33
Sajid Javed230118.85
Maryam Sultana3323.58
Soonki Jung4787.05