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Simultaneous Event Localization and Recognition in Surveillance Video

机译:监控视频中同时事件定位与识别

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The ubiquity of video-based surveillance demands automated approaches to analysis of ever-increasing video footages. Action/Event localization and recognition are two critical capabilities in surveillance video analysis, which have been largely addressed separately in the literature. In this paper, we propose an approach to simultaneously localize and recognize visual events from raw surveillance videos, employing an end-to-end learning strategy. Our approach formulates the task as weakly-supervised sequential semantic segmentation, in which we utilize a specific convolutional RNN to capture not only the appearance and the motion information but also their temporal evolution patterns. We tested our approach on the VIRAT 2.0 dataset. The experimental results, in comparison with relevant existing state-of-the-art, suggest that the proposed approach is promising in delivering a practical solution.
机译:基于视频的监视的难以分析不断增长的视频视频视频的自动化方法需要自动化的方法。行动/事件本地化和识别是监控视频分析中的两个关键能力,这在文献中主要在很大程度上解决。在本文中,我们提出了一种方法来同时本地化和识别从原始监视视频中的视觉事件,采用端到端的学习策略。我们的方法将任务制定为弱监督的顺序语义分割,其中我们利用特定的卷积RNN来不仅捕获外观和运动信息,还可以捕获它们的时间进化模式。我们在Virat 2.0数据集上测试了我们的方法。与现有现有最先进的实验结果表明,建议的方法在提供实际解决方案方面很有希望。

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