基于离散余弦变换的人脸图像分类

Z. Karhan, B. Ergen
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引用次数: 5

摘要

在这项研究中,它的目的是确定一个给定的图像是否属于那个人。特征提取是模式识别的重要组成部分,对当前人脸图像进行预处理后,利用离散余弦变换得到特征向量。根据转换所得数据的不同,分别使用5%、8%、10%和15%进行分类。在分类过程中使用了最近邻算法(KNN)。人脸图像由来自ORL数据库的40个人的图像组成,每个人有10个不同的图像。结果表明,利用较少的数据获得了较高的成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of face images using discrete cosine transform
In this study, it is aimed to determine whether a given image belongs to for that person. For feature extraction, which is an important part of pattern recognition, feature vector is obtained by using discrete cosine transform after performing preprocess the images on the current face. Based on the of datas obtained from conversion are classified by using 5%, 8%, 10%, and 15%. The nearest neighbor algorithm (KNN) is used in classification process. Face images consist of images that, taken from ORL database, belongs to 40 individuals, each has 10 different images. As a result, high success were obtained by using the few data.
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