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A Fully Online and Unsupervised System for Large and High-Density Area Surveillance: Tracking, Semantic Scene Learning and Abnormality Detection

机译:大型,高密度区域监视的完全在线且不受监督的系统:跟踪,语义场景学习和异常检测

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摘要

For reasons of public security, an intelligent surveillance system that can cover a large, crowded public area has become an urgent need. In this article, we propose a novel laser-based system that can simultaneously perform tracking, semantic scene learning, and abnormality detection in a fully online and unsupervised way. Furthermore, these three tasks cooperate with each other in one framework to improve their respective performances. The proposed system has the following key advantages over previous ones: (1) It can cover quite a large area (more than 60 x 35m), and simultaneously perform robust tracking, semantic scene learning, and abnormality detection in a high-density situation. (2) The overall system can vary with time, incrementally learn the structure of the scene, and perform fully online abnormal activity detection and tracking. This feature makes our system suitable for real-time applications. (3) The surveillance tasks are carried out in a fully unsupervised manner, so that there is no need for manual labeling and the construction of huge training datasets. We successfully apply the proposed system to the JR subway station in Tokyo, and demonstrate that it can cover an area of 60x35m, robustly track more than 150 targets at the same time, and simultaneously perform online semantic scene learning and abnormality detection with no human intervention.
机译:出于公共安全的考虑,迫切需要能够覆盖大范围拥挤公共区域的智能监视系统。在本文中,我们提出了一种新颖的基于激光的系统,该系统可以以完全在线且无监督的方式同时执行跟踪,语义场景学习和异常检测。此外,这三个任务在一个框架中相互协作以提高其各自的性能。与以前的系统相比,该系统具有以下主要优势:(1)它可以覆盖很大的区域(大于60 x 35m),并且在高密度情况下同时执行鲁棒的跟踪,语义场景学习和异常检测。 (2)整个系统可以随时间而变化,可以逐步了解场景的结构,并可以进行完全在线的异常活动检测和跟踪。此功能使我们的系统适用于实时应用。 (3)监视任务是在完全无人监督的情况下执行的,因此无需人工标记和构建庞大的训练数据集。我们成功地将拟议的系统应用于东京的JR地铁站,并证明它可以覆盖60x35m的区域,同时能够强大地跟踪150多个目标,并且无需人工干预即可同时执行在线语义场景学习和异常检测。

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