Real-Time Change Detection with Convolutional Density Approximation
Permanent link
https://hdl.handle.net/10037/33309Date
2024-04-02Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Background Subtraction (BgS) is a widely researched technique to develop online Change Detection algorithms for static video cameras. Many BgS methods have employed the unsupervised, adaptive approach of Gaussian Mixture Model (GMM) to produce decent backgrounds, but they lack proper consideration of scene semantics to produce better foregrounds. On the other hand, with considerable computational expenses, BgS with Deep Neural Networks (DNN) is able to produce accurate background and foreground segments. In our research, we blend both approaches for the best. First, we formulated a network called Convolutional Density Approximation (CDA) for direct density estimation of background models. Then, we propose a self-supervised training strategy for CDA to adaptively capture high-frequency color distributions for the corresponding backgrounds. Finally, we show that background models can indeed assist foreground extraction by an efficient Neural Motion Subtraction (NeMos) network. Our experiments verify competitive results in the balance between effectiveness and efficiency.
Publisher
World Scientific PublishingCitation
Ha, Nguyen, Phan, Ha. Real-Time Change Detection with Convolutional Density Approximation. Vietnam Journal of Computer Science. 2023Metadata
Show full item recordCollections
Copyright 2023 The Author(s)