基于图像稀疏表示的监控视频处理分块RLS算法

Donghai Bao, Fang Yang, Qianru Jiang, Sheng Li, Xiongxiong He
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引用次数: 1

摘要

针对监控视频处理,提出了压缩感知系统中用于字典学习的块递归最小二乘(BRLS)算法。该方法不同于传统方法先将图像块转换为列,然后一次给出所有训练块,采用BRLS算法直接迭代地使用图像块来训练字典。由于监控视频的背景几乎是固定的,因此可以对前景残差进行稀疏表示,直接用背景相减法进行重建。该方法和框架已在实际图像和监控视频处理中得到应用。仿真结果表明,该方法在图像和监控视频中都比传统方法具有更好的表示性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Block RLS algorithm for surveillance video processing based on image sparse representation
Block recursive least square (BRLS) algorithm for dictionary learning in compressed sensing system is developed for surveillance video processing. The new method uses image blocks directly and iteratively to train dictionaries via BRLS algorithm, which is different from classical methods that require to transform blocks to columns first and then giving all training blocks at one time. Since the background in surveillance video is almost fixed, the residual of foreground can be represented sparsely and reconstructed with background subtraction directly. The new method and framework are applied in real image and surveillance video processing. Simulation results show that the new method achieves better representation performance than classical ones in both image and surveillance video.
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