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首页> 外文期刊>Information Sciences: An International Journal >SiTGRU: Single-Tunnelled Gated Recurrent Unit for Abnormality Detection
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SiTGRU: Single-Tunnelled Gated Recurrent Unit for Abnormality Detection

机译:入场所:单隧道门控复发单元,用于异常检测

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Abnormality detection is a challenging task due to the dependence on a specific context and the unconstrained variability of practical scenarios. In recent years, it has benefited from the powerful features learnt by deep neural networks, and handcrafted features specialized for abnormality detectors. However, these approaches with large complexity still have limitations in handling long-term sequential data (e.g., videos), and their learnt features do not thoroughly capture useful information. Recurrent Neural Networks (RNNs) have been shown to be capable of robustly dealing with temporal data in long-term sequences. In this paper, we propose a novel version of Gated Recurrent Unit (GRU), called Single-Tunnelled GRU for abnormality detection. Particularly, the Single-Tunnelled GRU discards the heavy-weighted reset gate from GRU cells that overlooks the importance of past content by only favouring current input to obtain an optimized single-gated-cell model. Moreover, we substitute the hyperbolic tangent activation in standard GRUs with sigmoid activation, as the former suffers from performance loss in deeper networks. Empirical results show that our proposed optimized-GRU model outperforms standard GRU and Long Short-Term Memory (LSTM) networks on most metrics for detection and generalization tasks on CUHK Avenue and UCSD datasets. The model is also computationally efficient with reduced training and testing time over standard RNNs. (C) 2020 Elsevier Inc. All rights reserved.
机译:由于对特定上下文的依赖性以及实际情况的不受约束可变性,异常检测是一个具有挑战性的任务。近年来,它从深神经网络学到的强大功能中受益,并且专门用于异常探测器的手工制作功能。然而,这些具有大量复杂性的方法仍然具有处理长期顺序数据(例如,视频)的限制,并且其学习功能不会彻底捕获有用的信息。已证明经常性神经网络(RNNS)能够强大地处理长期序列中的时间数据。在本文中,我们提出了一种新颖的栅极复发单元(GRU),称为单隧道GRU,用于异常检测。特别地,单隧道GRU从GRU电池中丢弃重型重置门,通过仅利用电流输入来获得过去含量以获得优化的单门电池模型来忽略过去含量的重要性。此外,我们将双曲弯切除激活用Sigmoid激活替代,因为前者在更深的网络中遭受性能损失。经验结果表明,我们提出的优化 - GRU模型优于大多数度量标准的GRU和长短短期内存(LSTM)网络,用于CUHK Avenue和UCSD数据集上的检测和泛化任务。该模型还在计算上效率降低训练和测试时间超过标准RNN。 (c)2020 Elsevier Inc.保留所有权利。

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