论文标题

人体测量估计中的人类偏见

Human biases in body measurement estimation

论文作者

Martynov, Kirill, Garimella, Kiran, West, Robert

论文摘要

身体测量(包括体重和身高)是健康的关键指标。能够在视觉上可靠地评估身体测量是提高对超重和肥胖的认识的一步,因此对公共卫生很重要。然而,目前尚不很好地了解人类可以从图像以及何时以及如何失败中评估体重和身高的准确程度。为了弥合这一差距,我们从从网络收集的人的1,682张图像开始,每个人都以真实的重量和身高注释,并要求人群工人估算每个图像的重量和身高。我们考虑了图像的特征以及评估图像的人群工人进行的,揭示了一些新颖的发现:(1)即使在聚集后,人群的准确性总体上很低。 (2)我们发现了有力的收缩偏向参考值的证据,使得人的重量(高度)被高估了,而沉重(高个子)人的重量被低估了。 (3)我们使用贝叶斯模型估算工人的个人参考值,发现参考值与工人自己的身高和体重密切相关,这表明工人更好地估计与自己相似的人。 (4)高个子的体重比矮小的人低估了;但是,知道高度只会减少体重误差。 (5)女性图像的准确性高于男性的精度,但在准确性方面,女性和男性工人也没有什么不同。 (6)如果对先前的猜测进行反馈,人群工人会随着时间的推移而有所改善。最后,我们探索了各种偏见校正模型,以提高人群的准确性,但发现这仅会导致适度的收益。总体而言,这项工作为人体测量估计的偏见提供了重要的见解,因为肥胖相关条件正在上升。

Body measurements, including weight and height, are key indicators of health. Being able to visually assess body measurements reliably is a step towards increased awareness of overweight and obesity and is thus important for public health. Nevertheless it is currently not well understood how accurately humans can assess weight and height from images, and when and how they fail. To bridge this gap, we start from 1,682 images of persons collected from the Web, each annotated with the true weight and height, and ask crowd workers to estimate the weight and height for each image. We conduct a faceted analysis taking into account characteristics of the images as well as the crowd workers assessing the images, revealing several novel findings: (1) Even after aggregation, the crowd's accuracy is overall low. (2) We find strong evidence of contraction bias toward a reference value, such that the weight (height) of light (short) people is overestimated, whereas that of heavy (tall) people is underestimated. (3) We estimate workers' individual reference values using a Bayesian model, finding that reference values strongly correlate with workers' own height and weight, indicating that workers are better at estimating people similar to themselves. (4) The weight of tall people is underestimated more than that of short people; yet, knowing the height decreases the weight error only mildly. (5) Accuracy is higher on images of females than of males, but female and male workers are no different in terms of accuracy. (6) Crowd workers improve over time if given feedback on previous guesses. Finally, we explore various bias correction models for improving the crowd's accuracy, but find that this only leads to modest gains. Overall, this work provides important insights on biases in body measurement estimation as obesity related conditions are on the rise.

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