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Increasing Face Recognition Rates Using Novel Classification Algorithms

机译:使用新型分类算法提高人脸识别率

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This paper describes and discusses a set of algorithms which can improve ace recognition rates. These algorithms include adaptive K-Nearest Neighbour, daptive weighted average, reverse weighted average and exponential weighted average. ssentially, the algorithms are extensions to the basic classification algorithm sed in most face recognition research. Whereas the basic classification algorithm elects the subject with the shortest associated distance, the algorithms presented in his paper manipulate and extract information from the set of distances between a est image and the training image set in order to obtain more accurate classifications. he base system to which the algorithms are applied uses the eigenfaces technique or recognition with an adapted Viola and Jones algorithm for face extraction. Most f the algorithms proposed show a consistent improvement over the baseline test.
机译:本文介绍并讨论了一组可以提高ace识别率的算法。这些算法包括自适应K最近邻,自适应加权平均值,反向加权平均值和指数加权平均值。从本质上讲,该算法是对大多数人脸识别研究中使用的基本分类算法的扩展。基本分类算法会选择关联距离最短的对象,而他的论文中介绍的算法则是从est图像和训练图像之间的距离集中操作并提取信息,以获得更准确的分类。应用了该算法的基本系统使用特征脸技术或具有适应性的Viola和Jones算法进行人脸提取的识别。所提出的大多数算法都显示出相对于基准测试的持续改进。

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