基于Gabor和Log-Gabor滤波器的面部表情分类

Nectarios Rose
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引用次数: 68

摘要

过去使用人工提取的面部点与Gabor滤波器卷积进行面部表情分类,取得了很好的效果。本文对人脸点与Gabor和log-Gabor滤波器卷积组成的特征向量以及静态人脸图像的全图像像素表示进行了分类性能测试。对这些特征向量进行主成分分析,并用线性判别分析比较分类精度。在两个数据库上进行的实验表明,Gabor和log-Gabor滤波器之间的性能相当,分类准确率约为85%。这是在低分辨率图像上实现的,不需要精确定位每个人脸图像上的人脸点
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 Classification using Gabor and Log-Gabor Filters
Facial expression classification has achieved good results in the past using manually extracted facial points convolved with Gabor filters. In this paper, classification performance was tested on feature vectors composed of facial points convolved with Gabor and log-Gabor filters, as well as with whole image pixel representation of static facial images. Principal component analysis was performed on these feature vectors, and classification accuracies compared using linear discriminant analysis. Experiments carried out on two databases show comparable performance between Gabor and log-Gabor filters, with a classification accuracy of around 85%. This was achieved on low-resolution images, without the need to precisely locate facial points on each face image
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