论文标题
基于面部分析的BMI预测模型的偏见检查
An Examination of Bias of Facial Analysis based BMI Prediction Models
论文作者
论文摘要
肥胖是当今世界面临的最重要的公共卫生问题之一。最近的一个趋势是开发干预工具,这些工具可以使用面部图像进行体重监测和管理以对抗肥胖症进行预测BMI。这些研究中的大多数使用BMI注释的面部图像数据集,主要由高加索受试者组成。对基于面部性别,年龄分类和面部识别系统的偏见评估的研究表明,这些技术对女性,深色皮肤的人和老年人的表现较差。直到现在,尚未研究基于面部分析的BMI预测工具的偏见。本文评估了基于面部分析的BMI预测模型在高加索和非裔美国男性和女性中的偏见。对修改后的形态数据集的性别,种族和BMI平衡版本的实验研究表明,BMI预测中的错误率最少,而黑人男性最高,而白人女性的错误率最高。此外,与心理相关的面部特征与重量相关,表明随着BMI的增加,面部区域的变化对于黑人男性而言更为突出,白人女性最少。这是黑人男性基于面部分析的BMI预测工具的错误率最小的原因,而白人女性则最高。
Obesity is one of the most important public health problems that the world is facing today. A recent trend is in the development of intervention tools that predict BMI using facial images for weight monitoring and management to combat obesity. Most of these studies used BMI annotated facial image datasets that mainly consisted of Caucasian subjects. Research on bias evaluation of face-based gender-, age-classification, and face recognition systems suggest that these technologies perform poorly for women, dark-skinned people, and older adults. The bias of facial analysis-based BMI prediction tools has not been studied until now. This paper evaluates the bias of facial-analysis-based BMI prediction models across Caucasian and African-American Males and Females. Experimental investigations on the gender, race, and BMI balanced version of the modified MORPH-II dataset suggested that the error rate in BMI prediction was least for Black Males and highest for White Females. Further, the psychology-related facial features correlated with weight suggested that as the BMI increases, the changes in the facial region are more prominent for Black Males and the least for White Females. This is the reason for the least error rate of the facial analysis-based BMI prediction tool for Black Males and highest for White Females.