Action Recognition From Depth Maps Using Deep Convolutional Neural Networks

Volume: 46, Issue: 4, Pages: 498 - 509
Published: Aug 1, 2016
Abstract
This paper proposes a new method, i.e., weighted hierarchical depth motion maps (WHDMM) + three-channel deep convolutional neural networks (3ConvNets), for human action recognition from depth maps on small training datasets. Three strategies are developed to leverage the capability of ConvNets in mining discriminative features for recognition. First, different viewpoints are mimicked by rotating the 3-D points of the captured depth maps. This...
Paper Details
Title
Action Recognition From Depth Maps Using Deep Convolutional Neural Networks
Published Date
Aug 1, 2016
Volume
46
Issue
4
Pages
498 - 509
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