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Face recognition based on Multi-class Fisher Scores

机译:基于多类Fisher分数的人脸识别

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摘要

In the use of hidden Markov model for face recognition, discrimination is weak, and the parameters of the model require a higher degree of precision. Therefore, this paper proposes a new method to obtain Fisher score features. This has fully considered the model parameters on the categories of the differential contribution, so precision of hidden Markov model parameters is lower. Because sole class discrimination is limited, this paper attempts to use multi-class Fisher score feature series in order to further improve the characteristics of the type of discrimination, the experiments proved that the Fisher score characteristics can greatly improve the face recognition rate.
机译:在使用隐马尔可夫模型进行人脸识别时,辨别力较弱,模型的参数要求较高的精度。因此,本文提出了一种获取Fisher评分特征的新方法。这就充分考虑了模型参数对微分贡献的类别,因此隐马尔可夫模型参数的精度较低。由于唯一类别的歧视是有限的,本文尝试使用多类别的Fisher评分特征序列,以进一步改善歧视类型的特征,实验证明,Fisher评分特征可以大大提高人脸识别率。

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