人脸识别Vs图像分辨率

M. A. Anjum, M.Y. Javed
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引用次数: 3

摘要

本文采用线性降维人脸识别技术讨论了图像分辨率对识别的影响,并通过自动裁剪算法(ACA)对图像尺度进行归一化。线性维技术是基于这样一个事实,即一个特定的感兴趣的模式可能存在于原始输入数据的低维子流形中,同时改变图像分辨率会影响模式/人脸识别结果,但达到特定水平时,人脸的几个特征变得如此突出,以至于它在相同分辨率下与模板图像提供最佳匹配,从而获得最佳成功率。在ORL、Yale、FERET和EME四种颜色数据库上进行了实验,结果表明,每种颜色数据库都存在一个最优图像分辨率,识别效果最好。该模型包括两个部分,第一部分是图像的预处理,将彩色图像转换为灰度图像,然后使用sobel边缘检测器掩模检测人脸的外曲率;然后采用自动裁剪算法实现人脸的自动归一化。第二部分给出了变图像分辨率的高斯金字塔,并讨论了分辨率对识别的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Recognition Vs Image Resolution
In this paper the effects of image resolution on recognition have been discussed using linear dimension reduction face recognition technique and image scale normalization is carried out through Automatic Cropping Algorithm (ACA). Linear dimension technique is based on the verity that a specific pattern of interest could reside in a low dimensional sub manifold in original input data and at the same time varying image resolution affect the pattern / face recognition results but reaching at a specific level few features of face become so prominent that it provides best matching with template image on same resolution and in return gives best success rate.. The experiments have been carried out on ORL, Yale, FERET and EME color databases and it is established that for each database there is always an optimal image resolution exits where the recognition performance is always best. This model consists of two parts, first part is preprocessing of the image, which includes conversion of a color image to gray scale image and then sobel edge detector mask is applied to detect the outer curvature of the face. Later on Automatic Cropping Algorithm is applied to carry out automatic face normalization. In Second part, the Gaussian pyramid of varying image resolution is obtained and effects of resolution on recognition are discussed.
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