Sparse Modeling of Human Actions from Motion Imagery
Abstract
An efficient sparse modeling pipeline for the classification of human actions from video is here developed. Spatio-temporal features that characterize local changes in the image are first extracted. This is followed by the learning of a class-structured dictionary encoding the individual actions of interest. Classification is then based on reconstruction, where the label assigned to each video comes from the optimal sparse linear combination of the learned basis vectors (action primitives) representing the actions. A low computational cost deep-layer model learning the interclass correlations of the data is added for increasing discriminative power. In spite of its simplicity and low computational cost, the method outperforms previously reported results for virtually all standard datasets.
Document Details
- Document Type
- Technical Report
- Publication Date
- Sep 02, 2011
- Accession Number
- ADA555324
Entities
People
- Alexey Castrodad
- Guillermo Sapiro
Organizations
- University of Minnesota