首页|Multi-frame based adversarial learning approach for video surveillance

Multi-frame based adversarial learning approach for video surveillance

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Foreground-background segmentation (FBS) is one of the prime tasks for automated video-based applica-tions like traffic analysis and surveillance. The different practical scenarios like weather degraded videos, irregular moving objects, dynamic background, etc., make FBS a challenging task. The existing FBS algo-rithms mainly depend on one of the three different factors, namely (1) complicated training process, (2) additionally trained modules for other applications, or (3) neglect the inter-frame spatio-temporal struc-tural dependencies. In this paper, a novel multi-frame-based adversarial learning network is proposed with multi-scale inception and residual module for FBS. As, FBS is a temporal enlightenment-based prob-lem, a temporal encoding mechanism with decreasing variable intervals is proposed for the input frame selection. The proposed network comprises multi-scale inception and residual connection-based dense modules to learn prominent features of the foreground object(s). Also, feedback of the estimated fore-ground map of previous frame is utilized to exhibit more temporal consistency. Learning of the network is concentrated in different ways like cross-data, disjoint, and global training-testing for FBS. The qualitative and quantitative experimental analysis of the proposed approach is done on three benchmark datasets for FBS. Experimental analysis on three benchmark datasets proves the significance of the proposed approach as compared to state-of-the-art FBS approaches. (c) 2021 Elsevier Ltd. All rights reserved.

Temporal samplingMulti-scale adversarial learningForeground-background segmentation and video surveillanceSALIENT OBJECT DETECTIONFOREGROUND DETECTION

Patil, Prashant W.、Dudhane, Akshay、Chaudhary, Sachin、Murala, Subrahmanyam

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Deakin Univ

Mohamed bin Zayed Univ Artificial Intelligence

Punjab Engn Coll

IIT Ropar

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2022

Pattern Recognition

Pattern Recognition

EISCI
ISSN:0031-3203
年,卷(期):2022.122
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