Motion Saliency Detection for Surveillance Systems Using Streaming Dynamic Mode Decomposition

Clicks: 195
ID: 112255
2020
Intelligent surveillance systems enable secured visibility features in the smart city era. One of the major models for pre-processing in intelligent surveillance systems is known as saliency detection, which provides facilities for multiple tasks such as object detection, object segmentation, video coding, image re-targeting, image-quality assessment, and image compression. Traditional models focus on improving detection accuracy at the cost of high complexity. However, these models are computationally expensive for real-world systems. To cope with this issue, we propose a fast-motion saliency method for surveillance systems under various background conditions. Our method is derived from streaming dynamic mode decomposition (s-DMD), which is a powerful tool in data science. First, DMD computes a set of modes in a streaming manner to derive spatial–temporal features, and a raw saliency map is generated from the sparse reconstruction process. Second, the final saliency map is refined using a difference-of-Gaussians filter in the frequency domain. The effectiveness of the proposed method is validated on a standard benchmark dataset. The experimental results show that the proposed method achieves competitive accuracy with lower complexity than state-of-the-art methods, which satisfies requirements in real-time applications.
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ngo2020symmetrymotion Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors Thien-Thu Ngo;VanDung Nguyen;Xuan-Qui Pham;Md-Alamgir Hossain;Eui-Nam Huh;Ngo, Thien-Thu;Nguyen, VanDung;Pham, Xuan-Qui;Hossain, Md-Alamgir;Huh, Eui-Nam;
Journal Symmetry
Year 2020
DOI 10.3390/sym12091397
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