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Real-time running event detection via a community patrol robot

机译:通过社区巡逻机器人实时运行事件检测

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摘要

Security surveillance is an important application for patrol robots. In this article, a real-time running event detection method is proposed for the community patrol robot. Although sliding window-based approaches have been quite successful in detecting objects in images, directly extending them to real-time object detection in video is not simple. This is due to the huge samples and diversity of object appearances with multivisual view and scale. To address these limitations, first, a simple and effective spatial-temporal filtering-based approach is proposed to obtain moving object proposals in each frame; then, two-stream convolutional networks fusion architecture is introduced to best take advantage of the spatial-temporal information from the proposal. The algorithm is applied on PatrolBot in community environments and runs at 15 fps on a consumer laptop. Two benchmark data sets (the Kungliga Tekniska Hogskolan [KTH] data set and Nanyang Technological University [NTU] running data set) were also used to compare results with previous works. Experimental results show higher accuracy and lower detection error rate in the proposed method.
机译:安全监测是巡逻机器人的重要申请。在本文中,为社区巡逻机器人提出了一种实时运行事件检测方法。虽然基于滑动窗口的方法在检测图像中的对象方面非常成功,但直接将它们扩展到视频中的实时对象检测并不简单。这是由于具有多视野和规模的物体出现的巨大样本和多样性。为了解决这些限制,首先提出了一种简单有效的空间滤波的方法,以获得每个帧中的移动对象提案;然后,引入了两流卷积网络融合架构,以最佳利用该提议的空间信息。该算法应用于社区环境的Partolbot,并在消费者笔记本电脑上以15 FPS运行。两个基准数据集(Kungliga Tekniska Hogskolan [kth]数据集和Nanyang技术大学[NTU]运行数据集)也用于将结果与以前的作品进行比较。实验结果表明,在所提出的方法中显示出更高的精度和更低的检测错误率。

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