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Improving the Robustness of Subspace Learning Techniques for Facial Expression Recognition

机译:提高子空间学习技术对面部表情识别的鲁棒性

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In this paper, the robustness of appearance-based, subspace learning techniques for facial expression recognition in geometrical transformations is explored. A plethora of facial expression recognition algorithms is presented and tested using three well-known facial expression databases. Although, it is common-knowledge that appearance based methods are sensitive to image registration errors, there is no systematic experiment reported in the literature and the problem is considered, a priori, solved. However, when it comes to automatic real-world applications, inaccuracies are expected, and a systematic preprocessing is needed. After a series of experiments we observed a strong correlation between the performance and the bounding box position. The mere investigation of the bounding box's optimal characteristics is insufficient, due to the inherent constraints a real-world application imposes, and an alternative approach is demanded. Based on systematic experiments, the database enrichment with translated, scaled and rotated images is proposed for confronting the low robustness of subspace techniques for facial expression recognition.
机译:在本文中,探索了基于外观的子空间学习技术在几何变换中的面部表情识别的鲁棒性。使用三个著名的面部表情数据库,提出并测试了多种面部表情识别算法。尽管基于外观的方法对图像配准错误敏感,这是众所周知的,但文献中没有系统的实验报告,因此可以先验地解决该问题。但是,当涉及到自动实际应用时,可能会出现不准确的情况,并且需要进行系统的预处理。经过一系列实验后,我们观察到性能与包围盒位置之间存在很强的相关性。由于对实际应用程序施加的固有限制,仅对边界框的最佳特性进行调查是不够的,因此需要一种替代方法。在系统实验的基础上,提出了利用平移,缩放和旋转图像丰富数据库的方法,以解决子空间技术用于面部表情识别的低鲁棒性问题。

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