基于仿生模式的人脸识别

Kun He, Jiliu Zhou, Shuhua Xiong, JunQiang Wu
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引用次数: 1

摘要

提出了一种基于“物质认知”的人脸识别模型。以同类样本的连续性规律为出发点,将人脸模式识别视为人脸模式认知而非分类。与传统的最佳分类目标统计模式识别相比,它更接近人类的认知特征。一个人的面部在低维空间的分布具有一定的内聚性,而不同人的面部覆盖重叠。随着空间维数的增加,同一类别样本的内聚力降低,而不同类别样本的排斥力增加。但随着空间维数的增加,同一类样本的内聚性和不同类样本的相斥性都在减小。候选人脸识别的覆盖范围在一定的空间内进行处理。如果它属于多个候选人脸覆盖,可以应用Fisher方法得到最终结果。基于ORL的实验证明,不经过训练的随机对象可以很好地识别。识别率可高达97.5%
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 on Bionic Pattern
A "matter cognition" based face recognition model has been proposed. By taking continuity rule of samples of a same class as the starting point, face pattern recognition is considered as face pattern cognition instead of its classification. Compared with traditional best classification goaled statistic pattern recognition, it's more similar to the character of human cognition. A person's face distribution in low dimension space has a certain kind of cohesion, while face coverage of different people overlap. By the increase of space dimension, the cohesion of samples of a same class decrease, while the repel of samples of different classes increases. But as the increase of space dimension continue, both the cohesion of samples of a same class and the repel of samples of different classes decreases. Coverage of candidate faces recognition is processed in a certain space. If it belongs to several candidate face coverage, Fisher method can be applied to get the final result. Experiment based on ORL proves that, random object without training can be perfectly recognized. The recognition rate can be as high as 97.5%
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