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Two-stream deep spatial-temporal auto-encoder for surveillance video abnormal event detection

机译:用于监控视频异常事件检测的两流深空间自动编码器

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With the improvement of public security awareness, video anomaly detection has become an indispensable demand in surveillance videos. To improve the accuracy of video anomaly detection, this paper proposes a novel two-stream spatial-temporal architecture called Two-Stream Deep Spatial-Temporal Auto Encoder (Two-Stream DSTAE), which is composed of a spatial stream DSTAE and a temporal stream DSTAE. Firstly, the spatial stream extracts appearance characteristics whereas the temporal stream extracts the motion patterns, respectively. Then, based on the novel policy joint reconstruction error, this model fuses the spatial stream and the temporal stream to extract spatial-temporal characteristics to detect anomalies. Furthermore, since the optical flow is invariant to appearances such as color or light, we introduce optical flow to enhance the capability of extracting continuity between adjacent frames and inter-frame motion information. We demonstrate the accuracy of the proposed method on the publicly available standard datasets: UCSD, Avenue and UMN datasets. Our experiments demonstrate high accuracy, which is superior to the state-of-the-art methods.(c) 2021 Elsevier B.V. All rights reserved.
机译:随着公共安全意识的提高,视频异常检测已成为监控视频中不可或缺的需求。为了提高视频异常检测的准确性,本文提出了一种名为两流深空间自动编码器(二流DSTAE)的新型两流空间 - 时空架构,其由空间流DSTAE和时间流组成dstae。首先,空间流提取外观特性,而时间流分别提取运动模式。然后,基于新的策略联合重建误差,该模型熔化空间流和时间流以提取空间时间特征来检测异常。此外,由于光学流量不变于诸如颜色或光的外观,因此引入光学流量以增强提取相邻帧和帧间运动信息之间提取连续性的能力。我们展示了在公开标准数据集中提出的方法的准确性:UCSD,Avenue和UMN数据集。我们的实验表现出高精度,这优于最先进的方法。(c)2021 Elsevier B.v.保留所有权利。

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