Minutiae based thermal face recognition using blood perfusion data

A. Seal, M. Nasipuri, D. Bhattacharjee, D. K. Basu
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引用次数: 21

Abstract

This paper describes an efficient approach for human face recognition based on blood perfusion data from infra-red face images. Blood perfusion data are characterized by the regional blood flow in human tissue and therefore do not depend entirely on surrounding temperature. These data bear a great potential for deriving discriminating facial thermogram for better classification and recognition of face images in comparison to optical image data. Blood perfusion data are related to distribution of blood vessels under the face skin. A distribution of blood vessels are unique for each person and as a set of extracted minutiae points from a blood perfusion data of a human face should be unique for that face. There may be several such minutiae point sets for a single face but all of these correspond to that particular face only. Entire face image is partitioned into equal blocks and the total number of minutiae points from each block is computed to construct final vector. Therefore, the size of the feature vectors is found to be same as total number of blocks considered. For classification, a five layer feed-forward backpropagation neural network has been used. A number of experiments were conducted to evaluate the performance of the proposed face recognition system with varying block sizes. Experiments have been performed on the database created at our own laboratory. The maximum success of 91.47% recognition has been achieved with block size 8×8.
基于细节的热人脸识别,利用血液灌注数据
本文提出了一种基于红外人脸图像血液灌注数据的人脸识别方法。血液灌注数据的特点是人体组织的局部血流,因此不完全依赖于周围的温度。与光学图像数据相比,这些数据具有很大的潜力,可以获得鉴别面部热像图,从而更好地对面部图像进行分类和识别。血流灌注数据与面部皮肤下血管的分布有关。血管的分布对每个人来说都是独一无二的,作为一组从血液灌注中提取的细节点,人脸的数据应该是独一无二的。一张脸可能有几个这样的细节点集,但所有这些都只对应于那个特定的脸。将整幅人脸图像分割成等分块,计算每个分块的分点总数来构造最终向量。因此,发现特征向量的大小与考虑的块总数相同。在分类方面,采用了五层前馈反向传播神经网络。进行了大量实验来评估不同块大小的人脸识别系统的性能。在我们自己的实验室创建的数据库上进行了实验。以块大小8×8为例,最大识别率为91.47%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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