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Moving objects segmentation using generative adversarial modeling
Neurocomputing
  • Maryam Sultana, Mohamed bin Zayed University of Artificial Intelligence
  • Arif Mahmood, Department of Computer Science, Information Technology University (ITU), Lahore, Pakistan
  • Thierry Bouwmans, Laboratoire MIA, La Rochelle Université, La Rochelle, France
  • Muhammad Haris Khan, Mohamed bin Zayed University of Artificial Intelligence
  • Soon Ki Jung, School of Computer Science and Engineering, Kyungpook National University, Daegu, South Korea
Document Type
Article
Abstract

Moving Objects Segmentation (MOS) is a crucial step in various computer vision applications, such as visual object tracking, autonomous vehicles, human activity analysis, surveillance, and security. Existing MOS approaches suffer from performance degradation due to extreme challenging conditions in real world complex environments such as varying illumination conditions, camouflage objects, dynamic backgrounds, shadows, bad weathers and camera jitters. To address these problems we proposed a novel generative adversarial based framework for moving objects segmentation. Our framework works with one classifier discriminator, one representation learning network and one generator jointly trained to perform MOS in various challenging scenarios. During training the discriminator network acts as a decision maker between real and fake training samples using conditional least squares loss. While the representation learning network provides the difference between the deep features of real and fake training samples using content loss formulation. Another loss term we have exploited to train our generator network is the reconstruction loss that minimizes the difference between the spatial information of real and fake training samples. Moreover, we also propose a novel modified U-net architecture for our generator network showing improved performance over Vanilla U-net model. Experimental evaluations of our proposed method on four benchmark datasets in comparison with thirty-two existing methods has demonstrated the strength of our proposed model. © 2022 Elsevier B.V.

DOI
10.1016/j.neucom.2022.07.081
Publication Date
9-28-2022
Keywords
  • Background modelling,
  • Generative adversarial network,
  • Moving objects segmentation,
  • Decision making,
  • Fake detection,
  • Learning systems,
  • Sampling
Comments

IR Deposit conditions:

OA version (pathway b) Accepted version

24 month embargo

License: CC BY-NC-ND

Must link to publisher version with DOI

Citation Information
M. Sultana, A. Mahmood, T. Bouwmans, M.H. Khan, and S.K. Jung, "Moving objects segmentation using generative adversarial modeling", in Neurocomputing, vol. 506, pp. 240-251, Sept 2022, doi:10.1016/j.neucom.2022.07.081