CVJul 24, 2020

Micro-expression spotting: A new benchmark

arXiv:2007.12421v252 citations
AI Analysis

This work addresses the lack of robust datasets and protocols for micro-expression spotting, which is crucial for applications in psychology and law enforcement, but it is incremental as it builds on existing databases.

The paper tackles the problem of micro-expression spotting by introducing a new challenging benchmark database (SMIC-E-Long) and a standardized evaluation protocol, with baseline experiments showing performance metrics like F1-scores around 0.3-0.4 for deep learning methods.

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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