Distribution of action movements (DAM): a descriptor for human action recognition

被引:0
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作者
Franco Ronchetti
Facundo Quiroga
Laura Lanzarini
Cesar Estrebou
机构
[1] Universidad Nacional de La Plata,Instituto de Investigacion en Informatica III
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关键词
human action recognition; descriptor; Prob-SOM; MSRC12; Action3D;
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摘要
Human action recognition fromskeletal data is an important and active area of research in which the state of the art has not yet achieved near-perfect accuracy on many wellknown datasets. In this paper, we introduce the Distribution of Action Movements Descriptor, a novel action descriptor based on the distribution of the directions of the motions of the joints between frames, over the set of all possible motions in the dataset. The descriptor is computed as a normalized histogram over a set of representative directions of the joints, which are in turn obtained via clustering. While the descriptor is global in the sense that it represents the overall distribution of movement directions of an action, it is able to partially retain its temporal structure by applying a windowing scheme.
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页码:956 / 965
页数:9
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