基于流形平坦化的极限学习机融合2.5D人脸识别

L. Chong, S. Chong
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引用次数: 0

摘要

基于Gabor的区域协方差矩阵(GRCM)是一种灵活的特征描述符,它将Gabor特征嵌入到协方差矩阵中。GRCM位于张量流形(张量流形是一个非欧几里德空间)上,利用仿射不变黎曼度量(AIRM)和对数欧几里德黎曼度量(LERM)等距离度量来计算两个协方差矩阵之间的距离。然而,这些距离度量在计算上是昂贵的。因此,提出了一种基于流形平坦化的机器学习方法来缓解这一问题。此外,研究了将2.5D局部数据与二维纹理图像融合的几种特征融合方法,提高了图像的识别率。实验结果表明,该方法能够有效地提高2.5D人脸识别的识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusion of 2.5D Face Recognition through Extreme Learning Machine via Manifold Flattening
A flexible feature descriptor, Gabor-based Region Covariance Matrix (GRCM), embeds the Gabor features into the covariance matrix has emerged in face recognition. GRCM locates on Tensor manifold, a non-Euclidean space, utilises distance measures such as Affine-invariant Riemannian Metric (AIRM) and Log-Euclidean Riemannian Metric (LERM) to calculate the distance between two covariance matrices. However, these distance measures are computationally expensive. Therefore, a machine learning approach via manifold flattening is proposed to alleviate the problem. Besides, several feature fusions that integrate the 2.5D partial data and 2D texture image are investigated to boost the recognition rate. Experimental results have exhibited the effectiveness of the proposed method in improving the recognition rate for 2.5D face recognition.
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