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Automatic Hidden Sadness Detection Using Micro-Expressions

机译:使用微表达式自动隐藏悲伤检测

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Micro-expressions (MEs) are very short, rapid, difficult to control and subtle which reveal hidden emotions. Spotting and recognition of MEs are very difficult for humans. Lately, researchers have tried to develop automatically MEs detection and recognition algorithms, however the biggest obstacle is the lack of a suitable datasets. Previous studies mainly focus on posed rather than spontaneous videos, and the obtained performances were low. To address these challenges, firstly we made a hidden sadness database, which includes 13 video clips elicited from students, who were watching very sad scenes from the movie in the University environment. Secondly, a new approach for automatic hidden sadness detection algorithm is proposed. Finally, Support Vector Machine and Random Forest classifiers are applied, since it has been shown that they provide state-of-the-art accuracy for the facial expression recognition problem. Two experiments were conducted, one with all extracted features from the face, and the other with only eye region features. The best results are achieved with Random Forest algorithm using all face features, with the recognition rate of 95.72%. For further improvement of the performance, we plan to integrate the deep Convolutional Neural Network algorithm, due to its grow popularity in the visual recognition.
机译:微表情(ME)非常短,快速,难以控制且微妙,揭示了隐藏的情感。对人类来说,发现和识别ME非常困难。最近,研究人员试图自动开发ME的检测和识别算法,但是最大的障碍是缺少合适的数据集。以往的研究主要集中在摆姿势而不是自发的视频上,并且获得的表现很低。为了应对这些挑战,首先,我们建立了一个隐藏的悲伤数据库,其中包含从学生那里提取的13个视频剪辑,这些学生在大学环境中观看电影中非常悲伤的场景。其次,提出了一种新的自动隐藏悲伤检测算法。最后,由于支持向量机和随机森林分类器已被证明可以为面部表情识别问题提供最新的准确性,因此应用了它们。进行了两个实验,一个实验具有从面部提取的所有特征,另一个实验仅具有眼睛区域的特征。使用所有脸部特征的随机森林算法可获得最佳结果,识别率为95.72%。为了进一步提高性能,我们计划集成深度卷积神经网络算法,因为它在视觉识别中越来越受欢迎。

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