实时人脸识别系统中相关向量机分类器的评价

H. Karthik, J. Manikandan
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引用次数: 14

摘要

人脸识别在消费电子产品中有多种应用,如笔记本电脑、智能手机、家庭安全系统、家庭自动化系统等等。机器学习是设计任何模式识别系统所需的重要概念之一,包括所提出的实时人脸识别系统。相关向量机被认为是文献中报道的最新机器学习算法之一。本文提出了一种基于面向梯度特征直方图的实时人脸识别系统的相关向量机分类器体系结构的设计与评价。为了评估所设计的系统的性能,首先考虑AT&T的人脸数据库,然后使用系统摄像头的实时人脸输入进行性能评估。该系统的识别率达到81.25-97.00%,并且可以很容易地扩展到其他模式识别系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of relevance vector machine classifier for a real-time face recognition system
Face recognition has found a variety of applications in consumer electronics, such as laptops, smart phones, home security systems, home automation systems and many more. Machine learning is one of the important concepts, required for designing any pattern recognition system, including the proposed real-time face recognition system. Relevance vector machine is considered as one of the most recent machine learning algorithms reported in literature. In this paper, design and evaluation of Relevance Vector Machine classifier architectures for a real-time face recognition system using Histogram of Oriented Gradient features is proposed. In order to assess the performance of system designed, AT&T database of faces are initially considered, followed by the performance evaluation using real-time face inputs from the system camera. 81.25–97.00% recognition accuracy is obtained on using the proposed system and the proposed work can be easily extended for various other pattern recognition systems too.
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