Pixel Perfect: Using Vision Transformers to Improve Road Quality Predictions from Medium Resolution and Heterogeneous Satellite Imagery

Aggrey Muhebwa, Gabriel Cadamuro, Jay Taneja
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Abstract

Critical infrastructure, such as roads and electricity, are core systems that enable economic development. However, these crucial systems are frequently under-monitored in developing regions, resulting in lost opportunities for growth. Recent advances in remote sensing and machine learning have enabled monitoring and measurement of infrastructure faster and more frequently than traditional methods. However, ground data are often unavailable, resulting in a disconnect between labels and remotely sensed data. Furthermore, data from industrialized regions can only sometimes be transferred to regions with sparse data due to differences in the concept of quality between regions. Additionally, inconsistency in data and the complexity of ML models can introduce bias due to learned characteristics across diverse regions, leading to inaccurate predictions and recommendations for action. In this study, we train and compare traditional neural networks and vision transformers to predict road quality from medium-resolution satellite imagery and apply them to realistic data conditions: heterogeneous temporal-spatial resolutions. The best models (vision transformers) achieve AUROC scores of 0.934 and 0.685 for binary and five-class classification tasks, respectively, exhibiting results appealing for inference in otherwise unmeasured areas. Furthermore, these experiments and results showed that proper training techniques could produce accurate models from limited, heterogeneous, and low-resolution data.
像素完美:使用视觉变压器改善中分辨率和异构卫星图像的道路质量预测
关键基础设施,如道路和电力,是推动经济发展的核心系统。然而,这些关键的系统在发展中地区往往缺乏监测,导致失去增长机会。遥感和机器学习的最新进展使基础设施的监测和测量比传统方法更快、更频繁。然而,地面数据往往不可用,导致标签和遥感数据之间的脱节。此外,由于地区之间质量概念的差异,来自工业化地区的数据有时只能转移到数据稀疏的地区。此外,数据的不一致和机器学习模型的复杂性可能会由于不同区域的学习特征而引入偏见,从而导致不准确的预测和行动建议。在这项研究中,我们训练并比较了传统的神经网络和视觉转换器,从中分辨率卫星图像中预测道路质量,并将其应用于现实的数据条件:异构时空分辨率。最佳模型(视觉变形器)在二元分类和五类分类任务上的AUROC得分分别为0.934和0.685,显示出在其他未测量领域具有吸引力的推断结果。此外,这些实验和结果表明,适当的训练技术可以从有限的、异构的和低分辨率的数据中产生准确的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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