稀疏编码在异常检测中的深入研究

Huamin Ren, Hong Pan, S. Olsen, M. B. Jensen, T. Moeslund
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引用次数: 2

摘要

稀疏表示已成功地应用于异常事件检测中,其基线是学习带有稀疏代码的字典。目前,人们对判别字典的构建进行了大量的研究,但对稀疏码的异常检测还没有进行比较研究。我们深入研究了两种稀疏码解——贪婪算法和凸l1范数解——及其对异常检测性能的影响。我们还提出了将稀疏码与不同检测方法相结合的框架。为了更好地理解稀疏码的适用性,我们从多个角度进行了对比实验,包括计算时间、重构误差、稀疏度、检测精度,以及它们结合各种检测方法的性能。实验结果表明,将OMP码与最大坐标检测相结合可以在UCSD数据集上获得最先进的性能[14]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An in-depth study of sparse codes on abnormality detection
Sparse representation has been applied successfully in abnormal event detection, in which the baseline is to learn a dictionary accompanied by sparse codes. While much emphasis is put on discriminative dictionary construction, there are no comparative studies of sparse codes regarding abnormality detection. We present an in-depth study of two types of sparse codes solutions - greedy algorithms and convex L1-norm solutions - and their impact on abnormality detection performance. We also propose our framework of combining sparse codes with different detection methods. Our comparative experiments are carried out from various angles to better understand the applicability of sparse codes, including computation time, reconstruction error, sparsity, detection accuracy, and their performance combining various detection methods. The experiment results show that combining OMP codes with maximum coordinate detection could achieve state-of-the-art performance on the UCSD dataset [14].
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