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Recognizing Action at a Distance
Nice, France October 13-October 16
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICCV.2003.1238420Ninth IEEE International Conference o ...
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Alexei A. Efros, UC Berkeley
Alexander C. Berg, UC Berkeley
Greg Mori, UC Berkeley
Jitendra Malik, UC Berkeley
Our goal is to recognize human actions 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 spatio-temporal 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 spatio-temporal 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.
Citation:
Alexei A. Efros, Alexander C. Berg, Greg Mori, Jitendra Malik, "Recognizing Action at a Distance," iccv, vol. 2, pp.726, Ninth IEEE International Conference on Computer Vision (ICCV'03) - Volume 2, 2003
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