看不见的家庭成员分类使用混合专家

M. Ghahramani, H. L. Wang, W. Yau, E. Teoh
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引用次数: 5

摘要

所有的家庭成员都以不同的方式彼此相似,这是我们的大脑可以识别的。在本文中,我们使用AdaBoost,支持向量机和k -最近邻分类器对不同patch的训练数据进行了家庭分类。在某些情况下,家族分类涉及不可见数据分类,分类器的性能明显下降。因此,对专家进行混合,以提高他们的表现。为了对上述方法进行公平比较,使用了来自3个不同民族的3个不同家庭。实验结果表明,采用基于家庭数据的专家混合多数投票方法,平均准确率可达76%,准确率可提高27%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unseen family member classification using mixture of experts
All family members resemble each other in different ways which is recognizable by our brain. In this paper, we have developed family classification using AdaBoost, Support Vector Machines and K-Nearest Neighbor classifiers with different patches of training data. In some cases family classification involve unseen data classification in which the classifiers' performance drop significantly. Therefore Mixture of Experts is conducted to improve their performance. To have a fair comparison of mentioned approaches 3 different families from 3 different ethnic groups are used. Experimental results show that we can achieve an average accuracy rate of 76 percent and up to 27 percent accuracy improvement by using majority voting of mixture of experts depending on the family data.
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