Unlike the conventional facial expressions, micro-expressions are involuntary and transient facial expressions capable of revealing the genuine emotions that people attempt to hide. Therefore, they can provide important information in a broad range of applications such as lie detection, criminal detection, etc. Since micro-expressions are transient and of low intensity, however, their detection and recognition is difficult and relies heavily on expert experiences. Due to its intrinsic particularity and complexity, video-based micro-expression analysis is attractive but challenging, and has recently become an active area of research. Although there have been numerous developments in this area, thus far there has been no comprehensive survey that provides researchers with a systematic overview of these developments with a unified evaluation. Accordingly, in this survey paper, we first highlight the key differences between macro- and micro-expressions, then use these differences to guide our research survey of video-based micro-expression analysis in a cascaded structure, encompassing the neuropsychological basis, datasets, features, spotting algorithms, recognition algorithms, applications and evaluation of state-of-the-art approaches. For each aspect, the basic techniques, advanced developments and major challenges are addressed and discussed. Furthermore, after considering the limitations of existing micro-expression datasets, we present and release a new dataset - called micro-and-macro expression warehouse (MMEW) - containing more video samples and more labeled emotion types. We then perform a unified comparison of representative methods on CAS(ME)2 for spotting, and on MMEW and SAMM for recognition, respectively. Finally, some potential future research directions are explored and outlined.
翻译:与传统的面部表达方式不同,微观表现方式是非自愿和短暂的面部表达方式,能够揭示人们试图隐藏的真实情感。因此,它们可以在一系列广泛的应用中提供重要信息,例如测谎、刑事探测等。由于微观表现方式是短暂的和低强度的,因此,其检测和识别是困难的,并在很大程度上依赖专家经验。由于其内在的特性和复杂性,基于视频的微观表现分析具有吸引力,但具有挑战性,最近已成为一个积极的研究领域。尽管在这一领域取得了许多进展,但迄今为止还没有开展全面调查,为研究人员系统地概述这些发展动态提供统一的评估。因此,在本调查文件中,我们首先强调宏观和微观表现方式之间的关键差异,然后利用这些差异来指导我们对基于视频的微观表现分析的研究调查,这些差异包括神经心理基础、数据集、特征、定位算法、识别算法、识别方式、应用和评估现状的现场评估方法。关于当前发展的现场方法、先进技术和主要挑战的系统分析,然后分别探讨并讨论目前对成本和历史数据进行的最新分析,然后分析,然后分析,然后讨论关于目前对目前成本和历史数据进行新的分析。