基于移动监控机器人的异常检测系统

M. Zaheer, Arif Mahmood, M. H. Khan, M. Astrid, Seung-Ik Lee
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引用次数: 13

摘要

自主异常检测是视觉监控系统的基本步骤,因此我们见证了各种有前途的算法的巨大进步。尽管如此,大多数先前的算法都假设静态监控摄像头,这严重限制了系统的覆盖范围,除非摄像头的数量呈指数增长,从而增加了安装和监控成本。在目前的工作中,我们提出了一种基于移动监控摄像机的异常检测系统,即移动机器人在目标区域连续导航。我们将新获得的测试图像与使用地理标签的正常图像数据库进行比较。对于异常检测,训练了一个Siamese网络,该网络在忽略视点差异的情况下分析两幅输入图像的异常。此外,我们的系统能够通过人工协作更新正常的图像数据库。最后,我们提出了一个新的测试数据集,该数据集通过机器人在受限的室外工业目标区域的重复访问来捕获。我们的实验证明了该系统用于移动监控机器人异常检测的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Anomaly Detection System via Moving Surveillance Robots with Human Collaboration
Autonomous anomaly detection is a fundamental step in visual surveillance systems, and so we have witnessed great progress in the form of various promising algorithms. Nonetheless, majority of prior algorithms assume static surveillance cameras that severely restricts the coverage of the system unless the number of cameras is exponentially increased, consequently increasing both the installation and the monitoring costs. In the current work we propose an anomaly detection system based on mobile surveillance cameras, i.e., moving robots which continuously navigate a target area. We compare the newly acquired test images with a database of normal images using geo-tags. For anomaly detection, a Siamese network is trained which analyses two input images for anomalies while ignoring the viewpoint differences. Further, our system is capable of updating the normal images database with human collaboration. Finally, we propose a new tester dataset that is captured by repeated visits of the robot over a constrained outdoor industrial target area. Our experiments demonstrate the effectiveness of the proposed system for anomaly detection using mobile surveillance robots.
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