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Anticipating Suspicious Actions using a Small Dataset of Action Templates

机译:使用Action Templates的小型数据集预测可疑操作

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In this paper, we propose to detect an action as soon as possible and ideally before it is fully completed. The objective is to support the monitoring of surveillance videos for preventing criminal or terrorist attacks. For such a scenario, it is of importance to have not only high detection and recognition rates but also low time latency for the detection. Our solution consists in an adaptive sliding window approach in an online manner, which efficiently rejects irrelevant data. Furthermore, we exploit both spatial and temporal information by constructing feature vectors based on temporal blocks. For an added efficiency, only partial template actions are considered for the detection. The relationship between the template size and latency is experimentally evaluated. We show promising preliminary experimental results using Motion Capture data with a skeleton representation of the human body.
机译:在本文中,我们建议尽快检测行动,理想地在完全完成之前。 目标是支持监测监测犯罪或恐怖袭击的监测视频。 对于这样的场景,不仅具有高检测和识别率,而且对检测的时间延迟也很重要。 我们的解决方案在具有在线方式的自适应滑动窗口方法中组成,其有效地拒绝无关的数据。 此外,我们通过基于时间块构建特征向量来利用空间和时间信息。 为了增加效率,仅考虑检测的部分模板操作。 实验评估模板大小和等待时间之间的关系。 我们展示了使用具有人体骨骼表示的运动捕获数据的有前途的初步实验结果。

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