Space-time Zernike Moments and Pyramid Kernel Descriptors for Action Classification
Abstract: Action recognition in videos is a relevant and challenging task of automatic semantic video analysis. Most successful approaches exploit local space-time descriptors. These descriptors are usually carefully engineered in order to obtain feature invariance to photometric and geometric variations. The main drawback of space-time descriptors is high dimensionality and efficiency. In this paper we propose a novel descriptor based on 3D Zernike moments computed for space-time patches. Moments are by construction not redundant and therefore optimal for compactness. Given the hierarchical structure of our descriptor we propose a novel similarity procedure that exploits this structure comparing features as pyramids. The approach is tested on a public dataset and compared with state-of-the art descriptors.
Citation:
L., Costantini; L., Seidenari; Serra, Giuseppe; A., Del Bimbo; L., Capodiferro "Space-time Zernike Moments and Pyramid Kernel Descriptors for Action Classification" Proc. of International Conference on Image Analysis and Processing (ICIAP), vol. 6979, Ravenna, ita, pp. 199 -208 , 2011-September, 2011 DOI: 10.1007/978-3-642-24088-1_21not available