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Skeleton based Human Action Recognition using a Structured-Tree Neural Network
2020
European Journal of Engineering Research and Science
The ability for automated technologies to correctly identify a human's actions provides considerable scope for systems that make use of human-machine interaction. Thus, automatic3D Human Action Recognition is an area that has seen significant research effort. In work described here, a human's everyday 3D actions recorded in the NTU RGB+D dataset are identified using a novel structured-tree neural network. The nodes of the tree represent the skeleton joints, with the spine joint being
doi:10.24018/ejers.2020.5.8.2004
fatcat:7frpgqyiujeqnim2xmcc3pnwsm