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Does Face Recognition Error Echo Gender Classification Error?

机译:面部识别错误回显性别分类错误吗?

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This paper is the first to explore the question of whether images that are classified incorrectly by a face analytics algorithm (e.g., gender classification) are any more or less likely to participate in an image pair that results in a face recognition error. We analyze results from three different gender classification algorithms (one open-source and two commercial), and two face recognition algorithms (one open-source and one commercial), on image sets representing four demographic groups (African-American female and male, Caucasian female and male). For impostor image pairs, our results show that pairs in which one image has a gender classification error have a better impostor distribution than pairs in which both images have correct gender classification, and so are less likely to generate a false match error. For genuine image pairs, our results show that individuals whose images have a mix of correct and incorrect gender classification have a worse genuine distribution (increased false non-match rate) compared to individuals whose images consistently have correct gender classification. Thus, compared to images that generate correct gender classification, images with gender classification error have a lower false match rate and a higher false non-match rate.
机译:本文是第一个探讨由面部分析算法(例如,性别分类)不正确分类的问题的问题,或多或少地参与导致面部识别误差的图像对。我们分析来自三个不同的性别分类算法(一个开源和两个商业)的结果,以及两个面部识别算法(一个开源和一个商业),代表四个人口群体(非裔美国人女性和男性,高加索人女性和男性)。对于Ipportor图像对,我们的结果表明,其中一个图像具有性别分类误差的对具有比其两个图像具有正确性分类的对的更好的Ipotor分布,因此不太可能产生假匹配错误。对于真正的图像对,我们的结果表明,与图像始终如一地具有正确性别分类的个人相比,其图像具有正确和不正确的性别分类的个人具有更正的真正的正版分配(增加错误的非匹配率)。因此,与生成正确性别分类的图像相比,具有性别分类误差的图像具有较低的假匹配速率和更高的错误非匹配速率。

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