Title
Grassmannian Spectral Regression For Learning And Classification
Abstract
Computational performance associated with high dimensional data is a common challenge for real-world action classification systems. Subspace learning, and manifold learning in particular, have received considerable attention as means of finding efficient low-dimensional representations that lead to better classification and efficient processing. A Grassmann manifold is a space that promotes smooth surfaces where points represent subspaces. In this paper, Grassmannian Spectral Regression (GRASP) is presented as a Grassmann inspired subspace learning algorithm that combines the benefits of Grassmann manifolds and spectral regression for fast and accurate classification. GRASP involves embedding high dimensional action subspaces as individual points onto a Grassmann manifold, kernelizing the embeddings onto a projection space, and then applying Spectral Regression for fast and accurate action classification. Furthermore, spatiotemporal action descriptions called Motion History Surfaces and Motion Depth Surfaces are utilized. The effectiveness of GRASP is illustrated for computationally intensive, multi-view and 3D action classification datasets.
Year
DOI
Venue
2015
10.1142/S0218213015400151
INTERNATIONAL JOURNAL ON ARTIFICIAL INTELLIGENCE TOOLS
Keywords
Field
DocType
Grassmann manifold, spectral regression, action recognition
Clustering high-dimensional data,GRASP,Embedding,Pattern recognition,Subspace topology,Computer science,Linear subspace,Grassmannian,Artificial intelligence,Nonlinear dimensionality reduction,Manifold,Machine learning
Journal
Volume
Issue
ISSN
24
4
0218-2130
Citations 
PageRank 
References 
0
0.34
5
Authors
2
Name
Order
Citations
PageRank
Sherif Azary1233.45
Andreas Savakis237741.10