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Random Gabor based templates for facial expression recognition in images with facial occlusion

机译:基于随机Gabor的模板用于面部遮挡图像中的面部表情识别

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摘要

Robust facial expression recognition (FER) under occluded face conditions is challenging. It requires robust algorithms of feature extraction and investigations into the effects of different types of occlusion on the recognition performance to gain insight. Previous FER studies in this area have been limited. They have spanned recovery strategies for loss of local texture information and testing limited to only a few types of occlusion and predominantly a matched train-test strategy. This paper proposes a robust approach that employs a Monte Carlo algorithm to extract a set of Gabor based part-face templates from gallery images and converts these templates into template match distance features. The resulting feature vectors are robust to occlusion because occluded parts are covered by some but not all of the random templates. The method is evaluated using facial images with occluded regions around the eyes and the mouth, randomly placed occlusion patches of different sizes, and near-realistic occlusion of eyes with clear and solid glasses. Both matched and mis-matched train and test strategies are adopted to analyze the effects of such occlusion. Overall recognition performance and the performance for each facial expression are investigated. Experimental results on the Cohn-Kanade and JAFFE databases demonstrate the high robustness and fast processing speed of our approach, and provide useful insight into the effects of occlusion on FER. The results on the parameter sensitivity demonstrate a certain level of robustness of the approach to changes in the orientation and scale of Gabor filters, the size of templates, and occlusions ratios. Performance comparisons with previous approaches show that the proposed method is more robust to occlusion with lower reductions in accuracy from occlusion of eyes or mouth.
机译:在封闭的面部条件下进行稳健的面部表情识别(FER)具有挑战性。它需要强大的特征提取算法,并研究不同类型的遮挡对识别性能的影响,以获取洞察力。先前在该领域的FER研究受到限制。他们已经针对丢失局部纹理信息的问题采用了多种恢复策略,并且测试仅限于几种类型的遮挡,并且主要采用了匹配的训练测试策略。本文提出了一种鲁棒的方法,该方法采用蒙特卡洛算法从画廊图像中提取一组基于Gabor的面部模板并将这些模板转换为模板匹配距离特征。产生的特征向量对于遮挡是鲁棒的,因为遮挡的部分被某些但不是全部随机模板覆盖。使用脸部图像对眼睛和嘴巴进行遮挡,随机放置大小不同的遮挡片,并使用透明且坚固的眼镜近乎真实地遮挡眼睛,以评估该方法。匹配和不匹配的训练和测试策略都被用来分析这种阻塞的影响。研究了整体识别性能和每个面部表情的性能。在Cohn-Kanade和JAFFE数据库上的实验结果证明了我们的方法具有很高的鲁棒性和快速的处理速度,并提供了对阻塞对FER影响的有用见解。参数灵敏度的结果表明,该方法在改变Gabor滤波器的方向和比例,模板的大小以及遮挡率方面具有一定的鲁棒性。与先前方法的性能比较表明,所提出的方法对咬合更鲁棒,而由于眼睛或嘴巴的咬合而导致的准确性降低较低。

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