资源论文Making Action Recognition Robust to Occlusions and Viewpoint Changes

Making Action Recognition Robust to Occlusions and Viewpoint Changes

2020-03-31 | |  58 |   44 |   0

Abstract

Most state-of-the-art approaches to action recognition rely on global representations either by concatenating local information in a long descriptor vector or by computing a single location independent his- togram. This limits their performance in presence of occlusions and when running on multiple viewpoints. We propose a novel approach to pro- viding robustness to both occlusions and viewpoint changes that yields significant improvements over existing techniques. At its heart is a local partitioning and hierarchical classification of the 3D Histogram of Ori- ented Gradients (HOG) descriptor to represent sequences of images that have been concatenated into a data volume. We achieve robustness to occlusions and viewpoint changes by combining training data from all viewpoints to train classifiers that estimate action labels independently over sets of HOG blocks. A top level classifier combines these local labels into a global action class decision.

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