基于元认知神经模糊推理系统的数据库独立人类情感识别

K. Subramanian, R. Venkatesh Babu, Savitha Ramasamy
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引用次数: 6

摘要

面部表情是表达情感的最具表现力的方式。已经提出了许多算法,这些算法雇用一组特定的人(通常是数据库)来训练和测试他们的模型。本文重点研究了数据库独立情感识别的挑战性问题,这是主体独立情感识别的一种推广情况。本研究采用的情绪识别系统是元认知神经模糊推理系统(McFIS)。McFIS有两个组成部分,即认知部分的神经模糊推理系统和元认知部分的自我调节学习机制。元认知组件监控神经模糊推理系统中的知识,并有效地决定学习什么、何时学习以及如何学习训练样本。对于每个样本,McFIS决定是否删除未被学习的样本,使用它来添加/修剪或更新网络参数或保留它以供将来使用。这有助于网络避免过度训练,从而提高其在未经训练的数据库上的泛化性能。在本研究中,我们从知名的(日本女性面部表情)JAFFE和(台湾女性表情图像)TFEID数据库中提取基于像素的情感特征。进行了两组实验。首先,我们基于5倍交叉验证研究,研究了两个数据库在McFIS上的单个性能。接下来,为了研究泛化性能,在JAFFE数据库上训练的McFIS在TFEID上进行测试,反之亦然。在两个实验中对SVM分类器的性能进行了比较,得到了令人满意的结果。
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Database independent human emotion recognition with Meta-Cognitive Neuro-Fuzzy Inference System
Facial emotions are the most expressive way to display emotions. Many algorithms have been proposed which employ a particular set of people (usually a database) to both train and test their model. This paper focuses on the challenging task of database independent emotion recognition, which is a generalized case of subject-independent emotion recognition. The emotion recognition system employed in this work is a Meta-Cognitive Neuro-Fuzzy Inference System (McFIS). McFIS has two components, a neuro-fuzzy inference system, which is the cognitive component and a self-regulatory learning mechanism, which is the meta-cognitive component. The meta-cognitive component, monitors the knowledge in the neuro-fuzzy inference system and decides on what-to-learn, when-to-learn and how-to-learn the training samples, efficiently. For each sample, the McFIS decides whether to delete the sample without being learnt, use it to add/ prune or update the network parameter or reserve it for future use. This helps the network avoid over-training and as a result improve its generalization performance over untrained databases. In this study, we extract pixel based emotion features from well-known (Japanese Female Facial Expression) JAFFE and (Taiwanese Female Expression Image) TFEID database. Two sets of experiment are conducted. First, we study the individual performance of both databases on McFIS based on 5-fold cross validation study. Next, in order to study the generalization performance, McFIS trained on JAFFE database is tested on TFEID and vice-versa. The performance The performance comparison in both experiments against SVM classifier gives promising results.
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