局部Gabor二值模式在遮挡下的面部表情识别

R. Azmi, S. Yegane
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引用次数: 20

摘要

在现实世界中,遮挡是面部表情识别(FER)的一大挑战。研究了三种不同的特征提取方法,用于遮挡图像的面部表情识别。使用Gabor滤波器和局部二值模式算子(LBP)以及局部Gabor二值模式(LGBP)进行特征提取。六种基本的面部表情加上中性的姿势。分类阶段采用绝对差距离和的K-NN分类器。我们考虑四种类型的非常频繁发生的闭塞在现实世界的情况下,眼睛/嘴和上/下面部区域闭塞。实验在JAFFE数据库上进行,采用错配训练测试策略。实验结果表明,LGBP方法在多种遮挡条件下的有效性和高鲁棒性,为遮挡对FER的影响提供了有用的见解。使用LGBP特征对未遮挡图像的平均准确率为96.25%,对眼睛遮挡图像的平均准确率为88.77%,对嘴巴遮挡图像的平均准确率为92.78%,对下面部遮挡图像的平均准确率为89.18%,对上面部遮挡图像的平均准确率为90.17%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial expression recognition in the presence of occlusion using local Gabor binary patterns
Occlusion is a big challenge for facial expression recognition (FER) in real-world situations. This study investigates three different methods of feature extraction for facial expression recognition from occluded images. The Gabor filters and the local binary pattern operator (LBP) and local Gabor binary pattern (LGBP) are used for feature extraction. Six basic facial expressions plus neutral pose are considered. The K-NN classifier with sum of absolute differences distance is used in classification phase. We consider four types of very frequently occurred occlusions in real-world situations, the eyes/mouth and upper/lower face region occlusion. The experiments carried out on JAFFE database and mismatched train-test strategy was used. Experimental results show the effectiveness and high robustness of LGBP approach under a variety of occlusion conditions and provide useful insights about the effects of occlusion on FER. Using LGBP features the average accuracy 96.25% on non-occluded images, 88.77% on eyes occluded images, 92.78% on mouth occluded images, 89.18% on lower face occluded images and 90.17% on upper face occluded images was obtained.
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