Segmenting across places: The need for fair transfer learning with satellite imagery
Miao Zhang, Harvineet Singh, Lazarus Chok, Rumi Chunara

TL;DR
This paper examines the fairness of transfer learning in satellite image segmentation across different locations, revealing disparities in model performance between urban and rural areas and emphasizing the need for fair transfer methods.
Contribution
It provides a systematic fairness analysis of transfer learning in satellite imagery segmentation and highlights the disparities between urban and rural areas.
Findings
Models perform better in rural areas overall.
Unsupervised domain adaptation favors urban areas, widening fairness gaps.
Rural images are more dissimilar between source and target districts.
Abstract
The increasing availability of high-resolution satellite imagery has enabled the use of machine learning to support land-cover measurement and inform policy-making. However, labelling satellite images is expensive and is available for only some locations. This prompts the use of transfer learning to adapt models from data-rich locations to others. Given the potential for high-impact applications of satellite imagery across geographies, a systematic assessment of transfer learning implications is warranted. In this work, we consider the task of land-cover segmentation and study the fairness implications of transferring models across locations. We leverage a large satellite image segmentation benchmark with 5987 images from 18 districts (9 urban and 9 rural). Via fairness metrics we quantify disparities in model performance along two axes -- across urban-rural locations and across…
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Taxonomy
TopicsAir Quality and Health Impacts
