基于时空约束的深度扩展在线RPCA鲁棒背景减法

S. Javed, T. Bouwmans, Soon Ki Jung
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引用次数: 19

摘要

运动物体的检测是视频监控系统的第一步。但是由于具有挑战性的背景,如照明条件,色彩饱和度和阴影等,目前的方法不能仅使用单个相机提供准确的分割。近年来,鲁棒主成分分析(RPCA)等子空间学习模型为目标检测提供了一个很好的框架。但是,由于批量优化方法,RPCA存在计算和内存问题的局限性,因此无法处理高维数据。近年来对业务流程分析方法的研究,如在线业务流程分析(OR-PCA),缓解了传统业务流程分析的局限性。然而,仅使用颜色或强度特征的or - pca表现出较弱的性能,特别是当背景和前景物体具有相似的颜色或背景场景中出现阴影时。为了解决这些问题,本文提出了一种融合深度和颜色信息的OR-PCA扩展方法,以实现鲁棒的背景减法。深度较少受到阴影或背景/前景色彩饱和度问题的影响。然而,前景对象可能无法检测到,当它远离相机领域,因为深度是不太有用的,没有颜色信息。我们表明,包含时空约束的OR-PCA利用颜色和深度特征提供了准确的分割。在一个定义良好的基准数据集上与其他方法的实验评估表明,我们提出的技术在使用颜色和范围信息时表现出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Depth extended online RPCA with spatiotemporal constraints for robust background subtraction
The detection of moving objects is the first step in video surveillance systems. But due to the challenging backgrounds such as illumination conditions, color saturation, and shadows, etc., the state of the art methods do not provide accurate segmentation using only a single camera. Recently, subspace learning model such as Robust Principal Component analysis (RPCA) shows a very nice framework towards object detection. But, RPCA presents the limitations of computational and memory issues due to the batch optimization methods, and hence it cannot process high dimensional data. Recent research on RPCA methods such as Online RPCA (OR-PCA) alleviates the traditional RPCA limitations. However, OR-PCA using only color or intensity features shows a weak performance specially when the background and foreground objects have a similar color or shadows appear in the background scene. To handle these challenges, this paper presents an extension of OR-PCA with the integration of depth and color information for robust background subtraction. Depth is less affected by shadows or background/foreground color saturation issues. However, the foreground object may not be detected when it is far from the camera field as depth is less useful without color information. We show that the OR-PCA including spatiotemporal constraints provides accurate segmentation with the utilization of both color and depth features. Experimental evaluations on a well-defined benchmark dataset with other methods demonstrate that our proposed technique is a top performer using color and range information.
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