基于外观的人脸识别与分类。结合方法

A. Chaari, M. Ahmed, S. Lelandais
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引用次数: 2

摘要

本文提出了一种旨在提高生物特征数据库识别能力的搜索方法。我们研究了人脸图像,并开发了基于外观的特征脸方法来生成整体和判别特征。这些描述人脸的特征向量通常用于在识别过程中建立所需的身份。在这项工作中,我们引入了一个聚类过程,旨在将生物特征数据库划分为多个分区,从而简化这些数据库中的识别任务。对搜索策略进行了各种研究,以调整特征提取和聚类参数。我们模拟了四位不同学习方式的专家,他们获得了不同的知识来识别人脸图像。此外,我们通过不同的测试序列来评估我们的方法对噪声影响的鲁棒性和性能。最后,我们提出结合和融合聚类分类器和识别过程来改进和简化我们的识别系统任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Appearance based face identification and classification. A Combining approach
We propose in this paper a search approach which aim to improve identification in biometric databases. We work with face images and we develop appearance-based Eigenfaces method to generate holistic and discriminant features. These feature vectors, which describe faces, are often used to establish the required identity in a recognition process. In this work, we introduce a clustering process which aims to split biometric databases into partitions and to simplify consequently recognition task within these databases. Various studies were undertaken on search strategies to adjust feature extraction and clustering parameters. We simulate four experts which learn differently and acquire various knowledge to recognize facial images. In addition, we evaluate the robustness and the performance of our approach against noise effect through different test series. We propose, finally, to combine and to fuse clustering classifiers and identification processes what improve and simplify our recognition system task.
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