DeepShade: Enable Shade Simulation by Text-conditioned Image Generation
Longchao Da, Xiangrui Liu, Mithun Shivakoti, Thirulogasankar Pranav Kutralingam, Yezhou Yang, Hua Wei

TL;DR
DeepShade introduces a diffusion-based model trained on a novel dataset to generate accurate shade simulations from text descriptions, aiding urban planning during heatwaves.
Contribution
The paper presents a new dataset and a diffusion model that synthesizes shade images conditioned on text, addressing the challenge of shade estimation from satellite imagery.
Findings
Effective shade generation from text descriptions.
Improved shade ratio calculations for route planning.
Potential applications in urban heat mitigation.
Abstract
Heatwaves pose a significant threat to public health, especially as global warming intensifies. However, current routing systems (e.g., online maps) fail to incorporate shade information due to the difficulty of estimating shades directly from noisy satellite imagery and the limited availability of training data for generative models. In this paper, we address these challenges through two main contributions. First, we build an extensive dataset covering diverse longitude-latitude regions, varying levels of building density, and different urban layouts. Leveraging Blender-based 3D simulations alongside building outlines, we capture building shadows under various solar zenith angles throughout the year and at different times of day. These simulated shadows are aligned with satellite images, providing a rich resource for learning shade patterns. Second, we propose the DeepShade, a…
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Taxonomy
TopicsComputer Graphics and Visualization Techniques · 3D Modeling in Geospatial Applications · Human Motion and Animation
