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AAAI 2011

Latent Semantic Learning by Efficient Sparse Coding with Hypergraph Regularization

Conference Paper Papers Artificial Intelligence

Abstract

This paper presents a novel latent semantic learning algorithm for action recognition. Through efficient sparse coding, we can learn latent semantics (i. e. high-level features) from a large vocabulary of abundant mid-level features (i. e. visual keywords). More importantly, we can capture the manifold structure hidden among midlevel features by incorporating hypergraph regularization into sparse coding. The learnt latent semantics can further be readily used for action recognition by defining a histogram intersection kernel. Different from the traditional latent semantic analysis based on topic models, our sparse coding method with hypergraph regularization can exploit the manifold structure hidden among mid-level features for latent semantic learning, which results in compact but discriminative high-level features for action recognition. We have tested our method on the commonly used KTH action dataset and the unconstrained YouTube action dataset. The experimental results show the superior performance of our method.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
1146862376505139655