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Skeleton based Human Action Recognition using a Structured-Tree Neural Network

Authors :
Khan, Muhammad Sajid
Ware, Andrew
Karim, Misha
Bahoo, Nisar
Khalid, Muhammad Junaid
Khan, Muhammad Sajid
Ware, Andrew
Karim, Misha
Bahoo, Nisar
Khalid, Muhammad Junaid
Source :
European Journal of Engineering and Technology Research; Vol 5 No 8: AUGUST 2020; 849-854; 2736-576X
Publication Year :
2020

Abstract

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 represented by the root. The connection between a child node and its parent is known as the incoming edge while the reciprocal connection is known as the outgoing edge. The uses of tree structure lead to a system that intuitively maps to human movements. The classifier uses the change in displacement of joints and change in the angles between incoming and outgoing edges as features for classification of the actions performed

Details

Database :
OAIster
Journal :
European Journal of Engineering and Technology Research; Vol 5 No 8: AUGUST 2020; 849-854; 2736-576X
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1198790541
Document Type :
Electronic Resource