基于稀疏编码的堆叠RNN异常检测研究

Weixin Luo, Wen Liu, Shenghua Gao
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引用次数: 484

摘要

基于稀疏编码的异常检测能力,我们提出了一种时间相干稀疏编码(TSC),其中我们强制使用相似的重构系数对相似的相邻帧进行编码。然后我们用一种特殊类型的堆叠递归神经网络(sRNN)映射TSC。利用sRNN同时学习所有参数的优点,可以避免对TSC进行非平凡的超参数选择,同时使用浅sRNN可以在前向传递中推断重建系数,从而减少了学习稀疏系数的计算成本。本文的贡献有两个方面:1)我们提出了一个TSC,它可以映射到一个sRNN,这有利于参数优化和加速异常预测。ii)我们建立了一个非常大的数据集,在数据量和场景多样性方面,它甚至大于所有现有数据集的总和。在玩具数据集和真实数据集上的大量实验表明,我们基于TSC和基于sRNN的方法始终优于现有方法,这验证了我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Revisit of Sparse Coding Based Anomaly Detection in Stacked RNN Framework
Motivated by the capability of sparse coding based anomaly detection, we propose a Temporally-coherent Sparse Coding (TSC) where we enforce similar neighbouring frames be encoded with similar reconstruction coefficients. Then we map the TSC with a special type of stacked Recurrent Neural Network (sRNN). By taking advantage of sRNN in learning all parameters simultaneously, the nontrivial hyper-parameter selection to TSC can be avoided, meanwhile with a shallow sRNN, the reconstruction coefficients can be inferred within a forward pass, which reduces the computational cost for learning sparse coefficients. The contributions of this paper are two-fold: i) We propose a TSC, which can be mapped to a sRNN which facilitates the parameter optimization and accelerates the anomaly prediction. ii) We build a very large dataset which is even larger than the summation of all existing dataset for anomaly detection in terms of both the volume of data and the diversity of scenes. Extensive experiments on both a toy dataset and real datasets demonstrate that our TSC based and sRNN based method consistently outperform existing methods, which validates the effectiveness of our method.
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