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Space-time interest points

机译:时空兴趣点

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Local image features or interest points provide compact and abstract representations of patterns in an image. We propose to extend the notion of spatial interest points into the spatio-temporal domain and show how the resulting features often reflect interesting events that can be used for a compact representation of video data as well as for its interpretation. To detect spatio-temporal events, we build on the idea of the Harris and Forstner interest point operators and detect local structures in space-time where the image values have significant local variations in both space and time. We then estimate the spatio-temporal extents of the detected events and compute their scale-invariant spatio-temporal descriptors. Using such descriptors, we classify events and construct video representation in terms of labeled space-time points. For the problem of human motion analysis, we illustrate how the proposed method allows for detection of walking people in scenes with occlusions and dynamic backgrounds.
机译:本地图像特征或兴趣点提供图像中图案的紧凑和抽象表示。我们建议将空间兴趣点的概念扩展到时空域中,并展示所产生的功能如何经常反映可用于视频数据的紧凑型表示的有趣事件以及其解释。要检测时空事件,我们建立了哈里斯和福尔斯特纳兴趣点运算符的想法,并检测空间时间中的本地结构,其中图像值在两个空间和时间内具有重要局部变化。然后,我们估计了检测到的事件的时空范围,并计算其刻度不变的时空描述符。使用此类描述符,我们在标记的时效点方面对事件进行分类并构建视频表示。对于人类运动分析的问题,我们说明了所提出的方法如何允许检测闭塞和动态背景的场景中的步行人员。

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