Title :
Action Recognition and Localization by Hierarchical Space-Time Segments
Author :
Shugao Ma ; Jianming Zhang ; Ikizler-Cinbis, N. ; Sclaroff, Stan
Abstract :
We propose Hierarchical Space-Time Segments as a new representation for action recognition and localization. This representation has a two-level hierarchy. The first level comprises the root space-time segments that may contain a human body. The second level comprises multi-grained space-time segments that contain parts of the root. We present an unsupervised method to generate this representation from video, which extracts both static and non-static relevant space-time segments, and also preserves their hierarchical and temporal relationships. Using simple linear SVM on the resultant bag of hierarchical space-time segments representation, we attain better than, or comparable to, state-of-the-art action recognition performance on two challenging benchmark datasets and at the same time produce good action localization results.
Keywords :
gesture recognition; image representation; support vector machines; video signal processing; action localization; action recognition; hierarchical relationships; hierarchical space-time segments; hierarchical space-time segments representation; linear SVM; nonstatic relevant space-time segments; static space-time segments; temporal relationships; two-level hierarchy; unsupervised method; video representation; Color; Image segmentation; Motion segmentation; Shape; Tracking; Trajectory; Vegetation; action localization; action recognition; space-time representation;
Conference_Titel :
Computer Vision (ICCV), 2013 IEEE International Conference on
Conference_Location :
Sydney, NSW
DOI :
10.1109/ICCV.2013.341