Human biases in body measurement estimation
Kirill Martynov, Kiran Garimella, Robert West

TL;DR
This study investigates human biases in estimating body weight and height from images, revealing systematic errors, biases towards personal reference values, and the potential for modest accuracy improvements through feedback and bias correction.
Contribution
It provides a comprehensive analysis of human biases in body measurement estimation, introducing a Bayesian model for reference values and evaluating bias correction methods.
Findings
Crowd accuracy is generally low even after aggregation.
Strong contraction bias toward a reference value affects estimates.
Workers' reference values correlate with their own body measurements.
Abstract
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…
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