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ICA Based Super-Resolution Face Hallucination and Recognition

机译:基于ICA的超分辨率人脸幻觉和识别

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摘要

In this paper, we propose a new super-resolution face hallucination and recognition method based on Independent Component Analysis (ICA). Firstly, ICA is used to build a linear mixing relationship between high-resolution (HR) face image and independent HR source faces images. The linear mixing coefficients are retained, thus the corresponding low-resolution (LR) face image is represented by linear mixture of down-sampled source faces images. So, when the source faces images are obtained by training a set of HR face images, unconstrained least square is utilized to obtain mixing coefficients to a LR image for hallucination and recognition. Experiments show that the accuracy of face recognition is insensitive to image size and the number of HR source faces images when image size is larger than 8×8, and the resolution and quality of the hallucinated face image are greatly enhanced over the LR ones, which is very helpful for human recognition.
机译:本文提出了一种基于独立分量分析(ICA)的超分辨率人脸幻觉与识别方法。首先,ICA用于建立高分辨率(HR)人脸图像和独立的HR源人脸图像之间的线性混合关系。线性混合系数得以保留,因此相应的低分辨率(LR)面部图像由下采样源面部图像的线性混合表示。因此,当通过训练一组HR脸部图像获得源脸部图像时,可以使用无约束的最小二乘来获得与LR图像的混合系数,以进行幻觉和识别。实验表明,当图像尺寸大于8×8时,人脸识别的精度对图像尺寸和HR源面部图像的数量不敏感,并且与LR图像相比,幻觉人脸图像的分辨率和质量大大提高,从而对人类识别非常有帮助。

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