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Study of image-based expression recognition techniques on three recent spontaneous databases

机译:最近三个自发数据库上基于图像的表情识别技术的研究

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Recent work in the recognition of naturalistic expressions, which is also known as spontaneous facial expressions recognition, has attracted researchers' attention due to its importance in different behavioural and clinical applications. The main design challenges in the area of emotion computing for automatic recognition of spontaneous facial expression are the face pose, capture distance, illumination variation, head rotation, and occlusion. Therefore, designing a robust system to mitigate these challenges is essential for real-time applications. In this paper, we present a comparison of the performance of image-based expression recognition in three types of recent spontaneous databases by using principles of sparse representation theory. The three spontaneous databases are the Video Database of Moving Faces and People (VDMFP), MMI Facial Expression Database and Belfast Induced Natural Emotion Database each having different challenges and the study aims to show which types of spontaneous conditions are more challenging in terms of system accuracy. We demonstrate through the straightforward analysis of results in terms of the error rates which aforesaid spontaneous database is more challenging. Then, we compare the use of difference images, in order for the creation of the decomposition of expressive images. The difference images emphasize the expressive areas in the face while eliminating the irrelevant parts; in this way, the identity of the facial image is removed and the identity-independent expression recognition problem is addressed.
机译:由于其在不同的行为和临床应用中的重要性,最近在识别自然主义表情(也称为自发面部表情)方面的工作吸引了研究人员的注意力。用于自动识别自发面部表情的情感计算领域的主要设计挑战是面部姿势,捕捉距离,照度变化,头部旋转和遮挡。因此,设计健壮的系统来缓解这些挑战对于实时应用至关重要。在本文中,我们使用稀疏表示理论原理对三种类型的自发数据库中基于图像的表情识别的性能进行比较。这三个自发数据库分别是移动人脸视频数据库(VDMFP),MMI面部表情数据库和贝尔法斯特诱导自然情感数据库,每个数据库都面临不同的挑战,该研究旨在表明哪种自发条件在系统准确性方面更具挑战性。我们通过对错误率方面的结果进行直接分析来证明,上述自发数据库更具挑战性。然后,我们比较差异图像的使用,以创建表达图像的分解。差异图像强调面部表情区域,同时消除不相关的部分;以这种方式,去除了面部图像的身份并且解决了与身份无关的表情识别问题。

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