Abstract

Multiview representation has become important due to its good performance for machine learning problems. In this paper, a multiview representation framework based on transfer learning is proposed for micro-expression recognition. The framework takes macro-expression as the auxiliary domain and micro-expression as the target domain, and assists the identification of micro-expressions by transferring the rich information extracted from the auxiliary domain, which effectively addresses the small sample problem of micro-expression recognition. The proposed algorithm mainly consists of three parts. Firstly, the features of the two domains are projected into a common space and the dictionaries of each domain are studied respectively. Then the dictionary of micro-expression domain is linearly reconstructed. Finally, in order to improve the comprehensive utilization of feature information, the most representative features from four different micro-expression feature sets are selected by multiview representation. The experiments and evaluation are carried out on three different databases, and the performance comparison of the proposed algorithm with other advanced methods are given. The experimental results show that the proposed algorithm has the better performance than other related methods.

Highlights

  • Micro-expression is an involuntary facial expression during a very short time when people are in a suppressed state or try to hide their real feelings

  • Based on the above research and analysis, we proposed a multiview representation framework based on transfer learning for micro-expression recognition

  • In this paper, we proposed a multiview representation framework based on transfer learning for micro-expression recognition

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Summary

A Multiview Representation Framework for Micro-Expression Recognition

School of Information Science and Engineering, Shandong University, Qingdao 266237, China , (Member, IEEE), This work was supported in part by the National Key Research and Development Program of China under Grant 2018YFC0831001, in part by the Natural Science Foundation of China under Grant 61571275 and Grant 61971468, in part by the Key Research and Development Program of Shandong Province, and in part by the Young Scholars Program of Shandong University.

INTRODUCTION
MULTIVIEW REPRESENTATION
FEATURE SELECTION BASED ON MULTIVIEW REPRESENTATION
OPTIMAL SOLUTION
EXPERIMENTS
Findings
CONCLUSION
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