A transfer learning approach to cross-database facial expression recognition

Ronghang Zhu, Tingting Zhang, Qijun Zhao, Zhihong Wu
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引用次数: 18

Abstract

Despite the high facial expression recognition accuracy reported on individual databases, cross-database facial expression recognition is still a challenging problem. This is essentially a problem of generalizing a facial expression recognizer trained with data of certain subjects under certain conditions to different subjects and/or different conditions. Such generalization capability is crucial in real-world applications. However, little attention has been focused on this problem in the literature. Transfer learning, a domain adaptation approach, provides effective techniques for transferring knowledge from source (training) data to target (testing) data when they are characterized by different properties. This paper makes the first attempt to apply transferring learning to cross-database facial expression recognition. It proposes a transfer learning based cross-database facial expression recognition approach, in which two training stages are involved: One for learning knowledge from source data, and the other for adapting the learned knowledge to target data. This approach has been implemented based on Gabor features extracted from facial images, regression tree classifiers, the AdaBoosting algorithm, and support vector machines. Evaluation experiments have been done on the JAFFE, FEED, and extended Cohn-Kanade databases. The results demonstrate that using the proposed transferring learning approach the cross-database facial expression recognition accuracy can be improved by more than 20%.
跨数据库面部表情识别的迁移学习方法
尽管在单个数据库上的面部表情识别准确率很高,但跨数据库的面部表情识别仍然是一个具有挑战性的问题。这本质上是一个用特定对象在特定条件下的数据训练的面部表情识别器推广到不同对象和/或不同条件的问题。这种泛化能力在实际应用中是至关重要的。然而,在文献中很少关注这一问题。迁移学习是一种领域自适应方法,它提供了将知识从源(训练)数据转移到具有不同特性的目标(测试)数据的有效技术。本文首次尝试将迁移学习应用于跨数据库面部表情识别。提出了一种基于迁移学习的跨数据库面部表情识别方法,该方法包括两个训练阶段:一个是从源数据中学习知识,另一个是将学习到的知识适应目标数据。该方法基于从面部图像中提取的Gabor特征、回归树分类器、AdaBoosting算法和支持向量机实现。在JAFFE、FEED和扩展的Cohn-Kanade数据库上进行了评价实验。结果表明,采用迁移学习方法进行跨数据库面部表情识别的准确率提高了20%以上。
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