基于自适应扩散的人脸图像识别复原方法

Berrimi Fella, Hedli Riadh, Kara-Mohammed Chafia
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引用次数: 0

摘要

由于噪声会严重影响图像质量,因此从损坏的人脸图像中识别身份一直是一个难点。因此,在开始识别过程之前,有必要对面部图像进行增强。在本文中,我们使用PCA分解方法从噪声面部图像中提取相关特征,将小特征与大特征分离开来。为了恢复这些特征,我们应用了一种基于代表每个特征的向量的特征比的自适应扩散方法。因此,根据区域特征调整去噪过程,小特征通过后向扩散滤波的冲击增强,大特征通过各向同性扩散平滑。我们使用了ORL数据库和三种不同类型的噪声:高斯噪声、均匀噪声和椒盐噪声。该方法通过测试6个分类器来寻找最佳分类器。数值实验结果表明,该方法在客观指标、PSNR和SSIM方面对被测噪声类型具有最佳效果。结果表明,SVM分类器提供了良好的性能,并以97.85%的最高准确率优于其他分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Diffusion Based Restoration for Noisy Facial Image Recognition
Identity recognition from corrupted face image remains difficult, since noise can seriously affect the image quality. Thus, it is necessary to enhance facial image before starting the recognition process. In this paper, we extract relevant features from the noisy facial image using PCA decomposition that seperates the small features from the large ones. For restoring these features, we apply an adaptive diffusion method based on eigenratio of the vectors that represent each feature. Therefore, the denoising process is adapted according to region caracteristics where the small features are enhanced by shock of backward diffusion filter and the large features are smoothed with isotropic diffusion.We have used the ORL database and three different types of noise: Gaussian, uniform and salt-pepper. The proposed method tests six classifiers to find the best one. Numerical experiments show that the proposed method gives the best results for the tested noise types in terms of objective metrics, PSNR and SSIM. They show that SVM classifier provides good performance and outperforms other classifiers with the highest accuracy of 97.85%.
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