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基于自适应鲁棒在线度量学习的面部表情识别
引用本文:朱二莉,彭波,刘志中.基于自适应鲁棒在线度量学习的面部表情识别[J].电视技术,2015,39(11):77-82.
作者姓名:朱二莉  彭波  刘志中
作者单位:1. 苏州经贸职业技术学院,江苏苏州,215009
2. 哈尔滨工业大学计算机科学与技术学院,黑龙江哈尔滨,150001
基金项目:国家青年基金项目(NO.61300124)
摘    要:针对自然面部表情识别中的噪声标记问题,提出了一种自适应鲁棒在线度量学习方法.首先,学习新的度量空间以增加不同面部表情的判别性;然后,定义敏感度和特异性来表征每个注释器;最后,引入表示真实类标签的潜在变量,在期望最大化架构中迭代求解距离度量和注释器的可靠性.在MFP和AR人脸数据库上的实验结果表明,相比其他几种较新的方法,本方法在自然表情识别方面能获得更高的识别精度,高兴表情识别率可高达99.7%,并且在一定程度上降低了计算开销.

关 键 词:面部表情  度量学习  在线学习  鲁棒人脸识别  期望最大化
收稿时间:2014/7/13 0:00:00
修稿时间:2014/10/25 0:00:00

The research of facial expression recognition based on adaptive robust online metric learning algorithm
zhuerli,pengbo and LIU Zhi-zhong.The research of facial expression recognition based on adaptive robust online metric learning algorithm[J].Tv Engineering,2015,39(11):77-82.
Authors:zhuerli  pengbo and LIU Zhi-zhong
Affiliation:Changji Vocational and Technical College,Suzhou Institute of Trade,Harbin Institute of Technology
Abstract:For the problem of noise tag in spontaneous facial expression recognition, an adaptive robust online metric learning method is proposed. Firstly, a new metric space is learned to increase the discrimination of different facial expressions. Then, the sensitivity and specificity is defined to represent each annotator. The latent variables representing real class label are introduced, and iteration is used to solve the distance measure and the reliability of the annotator in expectation maximization architecture. Experimental results on MFP and AR face databases show that proposed method has higher recognition accuracy than several other advanced methods, its accuracy on happy expression can achieve 99.7%, and it has partly reduced the computation overhead.
Keywords:Facial expression  Metric learning  Online learning  Robust face recognition  Expectation maximization
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