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Emotion recognition in the wild via sparse transductive transfer linear discriminant analysis

机译:通过稀疏转导线性判别分析进行野外情感识别

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Recently, emotion recognition in the wild has been attracted in computer vision and affective computing. In contrast to classical emotion recognition, emotion recognition in the wild becomes more challenging since the databases are collected under real scenarios. In such databases, there would inevitably be various adverse samples, whose emotion labels are considerably hard to be identified using many ideal databases based classical emotion recognition methods. Therefore, it significantly increases the difficulty of emotion recognition task based on the wild databases. In this paper, we propose to use a transductive transfer learning framework to handle the problem of emotion recognition in the wild. We develop a sparse transductive transfer linear discriminant analysis (STTLDA) for facial expression recognition and speech emotion recognition under real-world environments, respectively. As far as we know, the novelty of our method is that we are the first to consider emotion recognition in the wild as a transfer learning problem and use the transductive transfer learning method to eliminate the distribution difference between training and testing samples caused by the "wild". We conduct extensive experiments on SFEW 2.0, AFEW 4.0 and 5.0 (audio part) databases, which were used in Emotion Recognition in the Wild Challenge (EmotiW 2014 and 2015) to evaluate our proposed method. Experimental results demonstrate that our proposed STTLDA achieves a satisfactory performance compared with the baseline provided by the challenge organizers and some competitive methods. In addition, we report our previous results in static image based facial expression recognition challenge of EmotiW 2015. In this competition, we achieve an accuracy of 50 % on the Test set and this result has a 10.87 % improvement compared with the baseline released by challenge organizers.
机译:最近,计算机视觉和情感计算吸引了野外的情感识别。与经典的情感识别相反,由于数据库是在真实场景下收集的,因此野外的情感识别变得更具挑战性。在这样的数据库中,不可避免地会有各种不良样本,使用许多基于经典情感识别方法的理想数据库很难识别出它们的情绪标签。因此,它大大增加了基于野生数据库的情感识别任务的难度。在本文中,我们提议使用转导学习框架来处理野外的情绪识别问题。我们分别针对现实环境下的面部表情识别和语音情感识别开发了稀疏的转导线性判别分析(STTLDA)。据我们所知,我们方法的新颖性在于,我们是第一个将野外情感识别视为转移学习问题,并使用转导转移学习方法来消除由“野生”。我们在SFEW 2.0,AFEW 4.0和5.0(音频部分)数据库上进行了广泛的实验,这些数据库被用于野外挑战的情感识别(EmotiW 2014和2015),以评估我们提出的方法。实验结果表明,与挑战组织者和一些竞争方法提供的基线相比,我们提出的STTLDA具有令人满意的性能。此外,我们在EmotiW 2015的基于静态图像的面部表情识别挑战中报告了我们先前的结果。在这项竞赛中,我们在测试集上达到了50%的准确度,并且与挑战发布的基准相比,该结果提高了10.87%组织者。

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