基于SIFT特征提取和Hausdorff距离度量的流形投影的姿态不变人脸识别

Jian Zhang, Jinxiang Zhang, Rui Sun
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引用次数: 1

摘要

人脸识别在视频监控、人机交互等领域有着广泛的应用。目前的人脸识别技术受给定人脸图像的未知姿态的限制。提出了一种新的姿态不变人脸识别方法。在训练阶段,提取样本图像的SIFT特征描述子,利用基于Hausdorff距离度量的拉普拉斯特征映射构造图像流形,对样本图像的低维嵌入进行建模。在识别阶段,同样提取给定人脸图像的SIFT特征描述符,并基于Hausdorff距离度量将图像嵌入到已有的流形中,最后在低维子空间中使用k近邻分类器实现识别。在多个数据集上的实验结果表明,该方法在识别准确率上优于现有方法。
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Pose-invariant face recognition via SIFT feature extraction and manifold projection with Hausdorff distance metric
Face recognition has found its usage in various domains like video surveillance and human computer interaction. Current face recognition technique is enslaved to unknown pose of the given face image. This paper proposes a novel approach to pose-invariant face recognition. In the training phase, the SIFT feature descriptors of the sample images are extracted, then an image manifold is constructed using Laplacian Eigenmaps based on Hausdorff distance metric to model the low-dimensional embeddings of the sample images. In recognition phase, the SIFT feature descriptors of the given face image are similarly extracted, and the image is embedded into the existed manifold based on Hausdorff distance metric, the recognition is finally achieved by a K-nearest-neighbor classifier in the low-dimensional subspace. Experimental results on multiple datasets demonstrate the superiority of the proposed approach to existing methods in recognition accuracy rate.
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