论文标题

面部微表达分析的概述:数据,方法论和挑战

An Overview of Facial Micro-Expression Analysis: Data, Methodology and Challenge

论文作者

Xie, Hong-Xia, Lo, Ling, Shuai, Hong-Han, Cheng, Wen-Huang

论文摘要

面部微表达表明在情感交流过程中出现的简短而微妙的面部运动。与宏观表达相比,由于时间的较短和细粒度的变化,微表达更具挑战性。近年来,微表达识别(MER)引起了很多关注,因为它可以使广泛的应用受益,例如警察询问,临床诊断,抑郁分析和业务谈判。在这项调查中,我们提供了一个新的概述,以讨论如今的新研究方向和挑战。例如,我们从三个新颖方面回顾了MER方法:宏到微型适应,基于关键顶点框架的识别以及基于面部动作单元的识别。此外,为了减轻有限和有偏见的数据的问题,调查了合成数据生成,以使微表达数据的多样性富集。由于微表达斑点可以增强微表达分析,因此本文还引入了最新的斑点作品。最后,我们讨论了MER研究中的挑战,并提供潜在的解决方案以及可能的进一步研究方向。

Facial micro-expressions indicate brief and subtle facial movements that appear during emotional communication. In comparison to macro-expressions, micro-expressions are more challenging to be analyzed due to the short span of time and the fine-grained changes. In recent years, micro-expression recognition (MER) has drawn much attention because it can benefit a wide range of applications, e.g. police interrogation, clinical diagnosis, depression analysis, and business negotiation. In this survey, we offer a fresh overview to discuss new research directions and challenges these days for MER tasks. For example, we review MER approaches from three novel aspects: macro-to-micro adaptation, recognition based on key apex frames, and recognition based on facial action units. Moreover, to mitigate the problem of limited and biased ME data, synthetic data generation is surveyed for the diversity enrichment of micro-expression data. Since micro-expression spotting can boost micro-expression analysis, the state-of-the-art spotting works are also introduced in this paper. At last, we discuss the challenges in MER research and provide potential solutions as well as possible directions for further investigation.

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