Abstract

Micro-expression recognition has been an active research area in recent years, it plays an important role in psychology and public security. Due to the aspects of short duration and subtle movement, it is challenging to extract spatiotemporal features of micro-expressions. The existing methods only extract features in the three-dimensional orthogonal plane and fail to make full use of that information. To solve this problem, we propose a new Local Cubes Binary Patterns (LCBP) method for micro-expression recognition. LCBP is cascaded by the motion information LCBP direction , the amplitude information LCBP amplitudes , and the spatial information LCBP3D to obtain the spatiotemporal features. The advantage of LCBP is its ability to preserve the spatiotemporal information and the low feature dimension. Furthermore, to increase the discrimination of features in micro-expression sequences, we apply a differential calculation energy map to find regions of interest (ROI) for getting a weighted energy map. The final micro-expression feature acquired by fusing the LCBP features and the weighted energy map are classified through the Support Vector Machine (SVM). We evaluate the proposed method on four published micro-expression databases including SMIC, CASME, CASME2, SAMM. Experimental results demonstrate that our proposed method achieves promising performance for micro-expression recognition.

Highlights

  • Micro-expression is a short, fast, and low-intensity facial expression that is difficult to recognize by the naked eyes

  • Effective micro-expression recognition plays an important role in psychology, criminal investigation, human behaviour, clinical medicine, and many other fields [2]–[6]

  • We found that in micro-expression recognition, the pixels in the local cube space should be directly encoded to obtain spatiotemporal information since the related features play a vital role in recognition

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Summary

Introduction

Micro-expression is a short, fast, and low-intensity facial expression that is difficult to recognize by the naked eyes. It is a manifestation of human beings when trying to suppress or hide real emotions [1]. Since the duration of a micro-expression is very short, lasting only 1/25 to 1/3 second, less than 1% of people can observe micro-expressions without special training. In 2002, Ekman developed the first Micro Expression Training Tool (METT) [7]. After METT training, artificial microexpression recognition ability was greatly improved. It should be mentioned that even with METT training, the ability of a person to recognize micro-expressions is very poor. The exploitation of an automatic micro-expression recognition system is very necessary and urgent

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