Research Abstract
Temporal shape variations intuitively appear to provide a good cue for human activity modeling. In this paper, we lay out a novel framework for human action recognition based on fuzzy log-polar histograms and temporal self-similarities. At first, a set of reliable keypoints are extracted from a video clip (i.e., action snippet). The local descriptors characterizing the temporal shape variations of action are then obtained by using the temporal self-similarities defined on the fuzzy log-polar histograms. Finally, the SVM classifier is trained on these features to realize the action recognition model. The proposed method is validated on two popular and publicly available action datasets. The results obtained are quite encouraging and show that an accuracy comparable or superior to that of the state-of-the-art is achievable. Furthermore, the method runs in real time and thus can offer timing guarantees to real-time …
Research Department
Research Journal
EURASIP Journal on Advances in Signal Processing
Research Member
Research Pages
540375
Research Publisher
Springer International Publishing
Research Rank
1
Research Vol
2011-1
Research Website
https://link.springer.com/article/10.1155/2011/540375
Research Year
2011