基于特征融合的人脸表情识别

Peng Wu, Xiaohua Li, Jiliu Zhou, Gang Lei
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引用次数: 5

摘要

传统的Gabor变换在提取表达式特征时需要对整个图像进行卷积计算。因此,特征维数非常大,计算复杂度也很高。虽然一些改进的方法可以通过人工标记特征点来降低特征维数和计算成本,但这些方法需要强烈的人为干预,不能满足自动识别的需要。本文将Gabor变换与ASM自动特征定位技术相结合,提出了一种基于特征融合的人脸表情识别方法。首先,利用ASM技术对人脸特征点进行定位;然后利用Gabor变换提取特征点的Gabor特征。最后,将两个特征集融合实现人脸表情识别。实验结果表明,该方法能有效利用表达的局部纹理信息和全局形状信息,获得较好的识别效果。
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Face Expression Recognition Based on Feature Fusion
The traditional Gabor transform need calculate convolution with whole image when extract expression feature. So, the feature dimensions are very large and computation complexity is very high. Though some improved methods can reduce the feature dimensions and computing cost by manually marking out the feature points, but those methods need intense human intervention and can not meet to the need of automatic recognition. In This paper, a new face expression recognition method are proposed based on feature fusion which combines the Gabor transform and ASM automatic feature orientation technology. Firstly, ASM technology is used to locate the feature point of a face shape. And then Gabor feature of feature point are extracted by using Gabor transform. Finally, the two feature sets are fused to implement the face expression recognition. The experimental results show that the proposed method can effectively utilize the local texture information and global shape information of expression and get better recognition effect.
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