Real-time Background Subtraction via L1 Norm Tensor Decomposition

Taehyeong Kim, Yoonsik Choe
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引用次数: 4

Abstract

Currently, background subtraction is being actively studied in many image processing applications. Nuclear Norm Minimization (NNM) and Weighted Nuclear Norm Minimization (WNNM) are commonly used background subtraction methods based on Robust Principal Component Analysis (RPCA). However, these techniques approximate the RPCA rank function and take the form of an iterative optimization algorithm. Therefore, due to the approximation, the NNM solution can not converge if the number of frames is small. In addition, the NNM and WNNM processing times are delayed because of their iterative optimization schemes. Thus, NNM and WNNM are not suitable for real-time background subtraction. In order to overcome these limitations, this paper presents a real-time background subtraction method using tensor decomposition in accordance with the recent tensor analysis research trend. In this study, we used the closed form TUCKER2 decomposition solution to omit the iterative process while retaining the L1 norm of the RPCA rank function. This proposed method allows for convergence even when the number of frames is small. Compared to NNM and WNNM, the proposed method reduces the processing time by more than 80 times and has a higher precision even when the number of frames are less than 10.
基于L1范数张量分解的实时背景减法
目前,背景减法在许多图像处理应用中得到了积极的研究。核范数最小化(NNM)和加权核范数最小化(WNNM)是基于鲁棒主成分分析(RPCA)的常用背景减除方法。然而,这些技术近似RPCA秩函数,并采取迭代优化算法的形式。因此,由于这种近似,当帧数较小时,NNM解不收敛。此外,NNM和WNNM由于采用迭代优化方案而延迟了处理时间。因此,NNM和WNNM不适合实时背景减除。为了克服这些局限性,本文根据最近张量分析的研究趋势,提出了一种基于张量分解的实时背景减法。在本研究中,我们使用封闭形式的TUCKER2分解解来省略迭代过程,同时保留RPCA秩函数的L1范数。该方法允许在帧数较少时收敛。与NNM和WNNM相比,该方法将处理时间缩短了80倍以上,并且在帧数小于10的情况下具有更高的精度。
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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