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Recognizing action at a distance

机译:在距离识别行动

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摘要

Our goal is to recognize human action at a distance, at resolutions where a whole person may be, say, 30 pixels tall. We introduce a novel motion descriptor based on optical flow measurements in a spatiotemporal volume for each stabilized human figure, and an associated similarity measure to be used in a nearest-neighbor framework. Making use of noisy optical flow measurements is the key challenge, which is addressed by treating optical flow not as precise pixel displacements, but rather as a spatial pattern of noisy measurements which are carefully smoothed and aggregated to form our spatiotemporal motion descriptor. To classify the action being performed by a human figure in a query sequence, we retrieve nearest neighbor(s) from a database of stored, annotated video sequences. We can also use these retrieved exemplars to transfer 2D/3D skeletons onto the figures in the query sequence, as well as two forms of data-based action synthesis "do as I do" and "do as I say". Results are demonstrated on ballet, tennis as well as football datasets.
机译:我们的目标是在一个整个人可能是的决议中识别人类行动,例如,30像素高。我们以用于每个稳定的人体图谱的时空音量的光学流量测量引入新的运动描述符,以及用于在最近邻的框架中使用的相关相似度量。利用嘈杂的光学流量测量是关键挑战,这是通过处理光学流量而不是精确的像素位移来解决的关键挑战,而是作为精确的测量的空间模式,其仔细地平滑和聚集以形成我们的时空运动描述符。为了在查询序列中对人体图形执行的动作来分类,我们从存储的注释视频序列的数据库中检索最近的邻居。我们还可以使用这些检索的示例将2D / 3D骨架转换到查询序列中的图中,以及两种类型的基于数据的动作合成“按照我做”和“我说的”。结果在芭蕾舞,网球和足球数据集上展示。

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