基于描述符组合的高效相似性搜索:人脸识别案例研究

Nawfal El Maliki, H. Silkan, M. E. Maghri
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引用次数: 0

摘要

人脸识别是计算机视觉中重要的搜索领域之一。其原理包括寻找与图像请求的给定人脸图像表示相似人脸的图像。该过程是通过提取请求图像的一组特征,然后将请求图像生成的特征与从整个人脸图像数据库中提取的特征进行比较来完成的。近年来,文献中提出了许多人脸表征和分类方法。然而,与索引、适当描述符的组合和时间计算有关的许多问题尚未得到解决。在本文中,我们通过构思一种基于预格式内容的图像检索方法来处理人脸身份验证的相关问题。它的欢乐界面允许用户根据人类的判断选择与每个特征相关联的适当的加权系数值,以提高检索性能。我们使用一组已知的特征在ORL数据库上测试了我们提出的方法。仿真结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient similarity search using a combination between descriptors: a case of study in human face recognition
Face recognition is one of the important fields of search in computer vision. Its principle consists to look for images that represent the similar faces to a given face image the image request. This process is done by extracting a set of features of the request image then making comparison between features generated by the request one and the others extracted from whole face image database. Recently, numerous face representation and classification methods have been proposed in the literature. Nevertheless, many issues related to indexing, combination of adequate descriptors and time computing have not yet been solved. In this paper, we deal with problems related to features combination and this, by conceiving a preformat content-based image retrieval that is mainly oriented to handle face authentication challenges. Its convivial interface allows to user the selection of appropriate weighting coefficient values associate to each feature based on human judgment in order to enhance the retrieval performance. We have tested our proposed method on ORL database by using a set of known features. The obtained results show the performance of our proposed method.
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