Learning a Target Sample Re-Generator for Cross-Database Micro-Expression Recognition

26 Jul 2017 Yuan Zong Xiaohua Huang Wenming Zheng Zhen Cui Guoying Zhao

In this paper, we investigate the cross-database micro-expression recognition problem, where the training and testing samples are from two different micro-expression databases. Under this setting, the training and testing samples would have different feature distributions and hence the performance of most existing micro-expression recognition methods may decrease greatly... (read more)

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