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Component-Based Ethnicity Identification from Facial Images

机译:基于面部图像的基于成分的种族识别

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This paper presents an exhaustive component-based analysis to identify the ethnicity from facial images. The different ethnic groups identified are Asian, African, African American, Asian Middle East, Caucasian and Other. The classification techniques investigated include Decision Trees, Naieve Bayes, Random Forest and K-Nearest Neighbor. Naive Bayes achieved 84.7 % and 85.6 % accuracy rates for African ethnicity and Asian ethnicity identification, respectively. The Decision Trees achieved 85.8 % for African American ethnicity identification rate, while K-Nearest Neighbor achieved 86.8 % for Asian Middle East ethnicity and Random Forest achieved 90.8 % for Caucasian ethnicity identification rate. This research work achieved an overall ethnicity identification rate of 86.6 %.
机译:本文提出了基于组件的详尽分析,以从面部图像中识别种族。确定的不同种族群体是亚洲人,非洲人,非裔美国人,亚洲中东人,高加索人和其他。研究的分类技术包括决策树,朴素贝叶斯,随机森林和K最近邻居。朴素贝叶斯在非洲族裔和亚洲族裔识别方面的准确率分别为84.7%和85.6%。决策树的非裔美国人种族识别率达到85.8%,K-Nearest邻居达到了亚洲中东种族的86.8%,而随机森林达到了白种人种族的90.9%。这项研究工作总体种族识别率为86.6%。

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