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Double Layer PCA based Hyper Spectral Face Recognition using KNN Classifier

机译:使用KNN分类器的基于双层PCA的高光谱人脸识别

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Hyperspectral face recognition is a very challenging task as well as time-consuming process. Hyperspectral face images (HFI) are a very big size images as compare to normal RGB images. HFI is always more than 10 bands with spatial resolution and its size varies from camera to camera. To execute these large numbers of files, a big memory is required due to high dimensions. Principle Component Analysis is used with double layer feature extraction to reduce the dimensional size without losing the prominent features. Double layer PCA is applied on the Hong Kong Polytechnic University's Hyperspectral Face Database (PolyU-HSFD) and classify on the basis of k-nearest neighbor.
机译:高光谱人脸识别是一项非常具有挑战性的任务,也是一项耗时的过程。与普通RGB图像相比,高光谱面部图像(HFI)是非常大的图像。 HFI总是超过10个具有空间分辨率的波段,并且其大小因摄像机而异。要执行这些大量文件,由于尺寸较大,因此需要较大的内存。主成分分析与双层特征提取一起使用,以减小尺寸大小而不会丢失突出的特征。双层PCA应用于香港理工大学的高光谱人脸数据库(PolyU-HSFD),并基于k最近邻进行分类。

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