论文标题

微表达发现:新的基准测试

Micro-expression spotting: A new benchmark

论文作者

Tran, Thuong-Khanh, Vo, Quang-Nhat, Hong, Xiaopeng, Li, Xiaobai, Zhao, Guoying

论文摘要

微型表达(MES)是人们试图隐藏自己的真实感受或掩盖自己的情绪时发生的简短和非自愿的面部表情。基于心理学研究,ME在理解真正的情绪方面发挥了重要作用,这导致了许多潜在的应用。因此,我的分析已成为各种研究领域的有吸引力的话题,例如心理学,执法和心理治疗。在计算机视觉领域,对ME的研究可以分为两个主要任务,即斑点和识别,这些任务用于识别MES在视频中的位置,并分别确定检测到的MES的情绪类别。最近,尽管已经进行了大量研究,但由于两个主要原因,尚未在实际层面上构建用于分析MES的全自动系统:大多数对ME的研究仅着重于识别部分,同时放弃了斑点任务;当前对我发现的公共数据集并不足够挑战,可以支持开发出强大的发现算法。本文的贡献是三倍:(1)我们引入了SMIC-E数据库的扩展,即Smic-E-E-E-E-Long数据库,这是我发现的一个新的具有挑战性的基准; (2)我们建议一种新的评估协议,该协议标准化了各种ME发现技术的比较; (3) extensive experiments with handcrafted and deep learning-based approaches on the SMIC-E-Long database are performed for baseline evaluation.

Micro-expressions (MEs) are brief and involuntary facial expressions that occur when people are trying to hide their true feelings or conceal their emotions. Based on psychology research, MEs play an important role in understanding genuine emotions, which leads to many potential applications. Therefore, ME analysis has become an attractive topic for various research areas, such as psychology, law enforcement, and psychotherapy. In the computer vision field, the study of MEs can be divided into two main tasks, spotting and recognition, which are used to identify positions of MEs in videos and determine the emotion category of the detected MEs, respectively. Recently, although much research has been done, no fully automatic system for analyzing MEs has yet been constructed on a practical level for two main reasons: most of the research on MEs only focuses on the recognition part, while abandoning the spotting task; current public datasets for ME spotting are not challenging enough to support developing a robust spotting algorithm. The contributions of this paper are threefold: (1) we introduce an extension of the SMIC-E database, namely the SMIC-E-Long database, which is a new challenging benchmark for ME spotting; (2) we suggest a new evaluation protocol that standardizes the comparison of various ME spotting techniques; (3) extensive experiments with handcrafted and deep learning-based approaches on the SMIC-E-Long database are performed for baseline evaluation.

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