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Multimodal face recognition using multidimensional clustering on hyperspectral face images

机译:在高光谱人脸图像上使用多维聚类的多模式人脸识别

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摘要

Human face is a very common biometric trait, with advancement of technology it is possible to capture face images in hyperspectral range. With the availability of such hyperspectral face data it is possible to build systems biometrics authentication systems working in hyperspectral range. Main focus current research is to use hyperspectral face images for biometric authentication. Hyperspectral face images with 33 band are used for generation of feature vector based on Vector Quantization (VQ) process. Popular VQ Algorithms like Kekre's Fast Codebook Generation (KFCG) Algorithm and Kekre's Median Codebook Generation (KMCG) Algorithm are used to generate codebooks. This feature vector is used for identification of the person. K-Nearest Neighborhood classifier (K-NN) is be used and performance is evaluated. Here the study is extended for Multimodal Implementation also, by combining Left, Right face samples feature vectors. The score fusion technique is implemented on front, left and right face images and the effect of fusion is studied.
机译:人脸是非常常见的生物特征,随着技术的发展,有可能在高光谱范围内捕获人脸图像。利用这种高光谱面部数据,可以构建在高光谱范围内工作的系统生物识别系统。当前的主要研究重点是使用高光谱面部图像进行生物识别。 33波段的高光谱人脸图像用于基于矢量量化(VQ)过程的特征矢量生成。诸如Kekre的快速码本生成(KFCG)算法和Kekre的中值码本生成(KMCG)算法之类的流行VQ算法用于生成码本。该特征向量用于识别人。使用K最近邻分类器(K-NN)并评估性能。在这里,通过组合左,右面部样本特征向量,该研究也扩展到多模式实现。在正面,左侧和右侧的面部图像上实现了分数融合技术,并研究了融合效果。

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