Latent Semantic Learning with Structured Sparse Representation for Human Action Recognition
Zhiwu Lu, Yuxin Peng

TL;DR
This paper introduces a novel latent semantic learning approach using structured sparse representation and spectral embedding to improve human action recognition by bridging the semantic gap with high-level features.
Contribution
It develops a parameter-free spectral embedding method based on L1-graph with structured sparse coding and hypergraph regularization for better latent semantic discovery.
Findings
Superior performance on KTH dataset
Effective in unconstrained YouTube dataset
Compact and discriminative high-level features
Abstract
This paper proposes a novel latent semantic learning method for extracting high-level features (i.e. latent semantics) from a large vocabulary of abundant mid-level features (i.e. visual keywords) with structured sparse representation, which can help to bridge the semantic gap in the challenging task of human action recognition. To discover the manifold structure of midlevel features, we develop a spectral embedding approach to latent semantic learning based on L1-graph, without the need to tune any parameter for graph construction as a key step of manifold learning. More importantly, we construct the L1-graph with structured sparse representation, which can be obtained by structured sparse coding with its structured sparsity ensured by novel L1-norm hypergraph regularization over mid-level features. In the new embedding space, we learn latent semantics automatically from abundant…
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