In recent years, media reports have called out bias and racism in face recognition technology. We review experimental results exploring several speculated causes for asymmetric cross-demographic performance. We consider accuracy differences as represented by variations in non-mated (impostor) and / or mated (genuine) distributions for 1-to-1 face matching. Possible causes explored include differences in skin tone, face size and shape, imbalance in number of identities and images in the training data, and amount of face visible in the test data ("face pixels"). We find that demographic differences in face pixel information of the test images appear to most directly impact the resultant differences in face recognition accuracy.
翻译:最近,媒体报道揭示了人脸识别技术中的偏见和种族主义问题。本文通过实验结果,探究了导致跨人种表现不对称的可能原因。我们考虑通过真实匹配和假冒(即未匹配)的差异比较来代表准确率差异,可能的原因包括肤色、脸部大小和形状、训练数据中身份和图片数量的不平衡以及测试数据中可见面部像素的种类等。我们发现,测试数据中面部像素信息的人种差异似乎最直接地影响了最终的人脸识别准确度差异。