Robust Background Subtraction Based on Perceptual Mixture-of-Gaussians with Dynamic Adaptation Speed

Mahfuzul Haque, M. Murshed
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引用次数: 10

Abstract

In this paper, we propose a new background subtraction technique based on perceptual mixture-of-Gaussians (PMOG). Unlike numerous variants of the classical MOG based approach [1], which can ensure reliable detection result only in known operating environments through proper parameter tuning, PMOG shows superior detection performance across dynamic unconstrained scenarios without any tuning. This is due to PMOG's intrinsic capability of exploiting several perceptual characteristics of human visual system for better understanding of the operating environment to avoid blind reliance on statistical observations. Furthermore, the proposed technique dynamically varies the model adaptation speed, i.e., learning rate, based on observed scene statistics for faster adaptation of changed background and better persistency of detected foreground entities. Comprehensive experimental evaluation on a number of standard datasets validates the robustness of the technique compared to the state-of-the-art.
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基于动态自适应速度的感知高斯混合鲁棒背景减法
在本文中,我们提出了一种新的基于感知混合高斯(PMOG)的背景减去技术。经典的基于MOG方法[1]的众多变体只有在已知的操作环境中通过适当的参数调优才能确保可靠的检测结果,而PMOG不需要任何调优就能在动态无约束场景中表现出卓越的检测性能。这是由于PMOG利用人类视觉系统的几个感知特征来更好地理解操作环境的内在能力,以避免盲目依赖统计观察。此外,该技术基于观察到的场景统计量动态改变模型的自适应速度,即学习率,从而更快地适应变化的背景,更好地持续检测到前景实体。对许多标准数据集的综合实验评估验证了该技术与最先进技术相比的鲁棒性。
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