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HOPC: Histogram of Oriented Principal Components of 3D Pointclouds for Action Recognition

About

Existing techniques for 3D action recognition are sensitive to viewpoint variations because they extract features from depth images which change significantly with viewpoint. In contrast, we directly process the pointclouds and propose a new technique for action recognition which is more robust to noise, action speed and viewpoint variations. Our technique consists of a novel descriptor and keypoint detection algorithm. The proposed descriptor is extracted at a point by encoding the Histogram of Oriented Principal Components (HOPC) within an adaptive spatio-temporal support volume around that point. Based on this descriptor, we present a novel method to detect Spatio-Temporal Key-Points (STKPs) in 3D pointcloud sequences. Experimental results show that the proposed descriptor and STKP detector outperform state-of-the-art algorithms on three benchmark human activity datasets. We also introduce a new multiview public dataset and show the robustness of our proposed method to viewpoint variations.

Hossein Rahmani, Arif Mahmood, Du Q. Huynh, Ajmal Mian• 2014

Related benchmarks

TaskDatasetResultRank
Action RecognitionNTU RGB+D 60 (Cross-View)
Accuracy52.8
575
Action RecognitionNTU RGB-D Cross-Subject 60
Accuracy50.1
305
Action RecognitionN-UCLA
Accuracy74.2
36
Action Recognition3D Action Pairs
Accuracy0.9833
17
Action RecognitionUWA3D protocol V3
Accuracy52.7
13
Action RecognitionUWA3D protocol V4
Accuracy51.8
13
Action RecognitionMSR-Action3D All Action Classes
Accuracy91.6
8
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