CVLGMLMar 3, 2014

Multiview Hessian regularized logistic regression for action recognition

arXiv:1403.0829v178 citations
Originality Incremental advance
AI Analysis

This work addresses video classification for social media data, but it is incremental as it builds on existing manifold regularization methods.

The paper tackled the problem of human action recognition in videos by proposing multiview Hessian regularized logistic regression (mHLR), which leverages multiple representations and Hessian regularization to explore local geometry, and demonstrated its effectiveness on the USAA dataset.

With the rapid development of social media sharing, people often need to manage the growing volume of multimedia data such as large scale video classification and annotation, especially to organize those videos containing human activities. Recently, manifold regularized semi-supervised learning (SSL), which explores the intrinsic data probability distribution and then improves the generalization ability with only a small number of labeled data, has emerged as a promising paradigm for semiautomatic video classification. In addition, human action videos often have multi-modal content and different representations. To tackle the above problems, in this paper we propose multiview Hessian regularized logistic regression (mHLR) for human action recognition. Compared with existing work, the advantages of mHLR lie in three folds: (1) mHLR combines multiple Hessian regularization, each of which obtained from a particular representation of instance, to leverage the exploring of local geometry; (2) mHLR naturally handle multi-view instances with multiple representations; (3) mHLR employs a smooth loss function and then can be effectively optimized. We carefully conduct extensive experiments on the unstructured social activity attribute (USAA) dataset and the experimental results demonstrate the effectiveness of the proposed multiview Hessian regularized logistic regression for human action recognition.

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