Dynamic Background Subtraction Using Least Square Adversarial Learning

M. Sultana, Arif Mahmood, T. Bouwmans, Soon Ki Jung
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引用次数: 12

Abstract

Dynamic Background Subtraction (BS) is a fundamental problem in many vision-based applications. BS in real complex environments has several challenging conditions like illumination variations, shadows, camera jitters, and bad weather. In this study, we aim to address the challenges of BS in complex scenes by exploiting conditional least squares adversarial networks. During training, a scene-specific conditional least squares adversarial network with two additional regularizations including L1-Loss and Perceptual-Loss is employed to learn the dynamic background variations. The given input to the model is video frames conditioned on corresponding ground truth to learn the dynamic changes in complex scenes. Afterwards, testing is performed on unseen test video frames so that the generator would conduct dynamic background subtraction. The proposed method consisting of three loss-terms including least squares adversarial loss, L1-Loss and Perceptual-Loss is evaluated on two benchmark datasets CDnet2014 and BMC. The results of our proposed method show improved performance on both datasets compared with 10 existing state-of-the-art methods.
使用最小二乘对抗学习的动态背景减法
动态背景减法(BS)是许多基于视觉的应用中的一个基本问题。BS在真实的复杂环境中有几个具有挑战性的条件,如照明变化,阴影,相机抖动和恶劣天气。在本研究中,我们的目标是通过利用条件最小二乘对抗网络来解决复杂场景中BS的挑战。在训练过程中,使用一个场景特定的条件最小二乘对抗网络,其中包含两个额外的正则化,包括L1-Loss和perception - loss,来学习动态背景变化。模型的给定输入是基于相应的ground truth条件的视频帧,以学习复杂场景中的动态变化。然后,对未见过的测试视频帧进行测试,以便生成器进行动态背景减法。该方法由最小二乘对抗损失、l1损失和感知损失三个损失项组成,并在CDnet2014和BMC两个基准数据集上进行了评估。与现有的10种最先进的方法相比,我们提出的方法在两个数据集上的性能都有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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