恢复算法对压缩感知背景减法的影响

Rhian Davies, L. Mihaylova, N. Pavlidis, I. Eckley
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引用次数: 11

摘要

背景减法是辅助处理监控视频所需的关键方法。目前的方法需要存储每个视频帧的每个像素,这可能是浪费的,因为大多数这些信息涉及无趣的背景。压缩感知可以利用前景在空间域中通常是稀疏的这一事实提供一种有效的解决方案。通过这样的假设,并将特定的恢复算法应用于训练好的背景,就有可能重建前景,只使用当前帧和估计背景场景之间的低维表示。虽然新的压缩感知背景减法算法正在被创造出来,但尚未研究恢复算法对背景减法性能的影响。通过将基跟踪和正交匹配跟踪(OMP)应用于标准测试视频,并比较它们的精度来考虑这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The effect of recovery algorithms on compressive sensing background subtraction
Background subtraction is a key method required to aid processing surveillance videos. Current methods require storing each pixel of every video frame, which can be wasteful as most of this information refers to the uninteresting background. Compressive sensing can offer an efficient solution by using the fact that foreground is often sparse in the spatial domain. By making this assumption and applying a specific recovery algorithm to a trained background, it is possible to reconstruct the foreground, using only a low dimensional representation of the difference between the current frame and the estimated background scene. Although new compressive sensing background subtraction algorithms are being created, no study has been made of the effect of recovery algorithms on performance of background subtraction. This is considered by applying both Basis Pursuit and Orthogonal Matching Pursuit (OMP) to a standard test video, and comparing their accuracy.
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