LGAICVJul 30, 2025

FuseTen: A Generative Model for Daily 10 m Land Surface Temperature Estimation from Spatio-Temporal Satellite Observations

arXiv:2507.23154v11 citationsh-index: 202025 International Conference on Machine Intelligence for GeoAnalytics and Remote Sensing (MIGARS)
Originality Incremental advance
AI Analysis

This provides accurate spatio-temporal data for studying urban heatwaves and droughts, addressing a domain-specific gap in remote sensing.

The paper tackled the problem of estimating daily land surface temperature at 10 m resolution by fusing satellite data, achieving a 32.06% improvement in quantitative metrics and 31.42% in visual fidelity over baselines.

Urban heatwaves, droughts, and land degradation are pressing and growing challenges in the context of climate change. A valuable approach to studying them requires accurate spatio-temporal information on land surface conditions. One of the most important variables for assessing and understanding these phenomena is Land Surface Temperature (LST), which is derived from satellites and provides essential information about the thermal state of the Earth's surface. However, satellite platforms inherently face a trade-off between spatial and temporal resolutions. To bridge this gap, we propose FuseTen, a novel generative framework that produces daily LST observations at a fine 10 m spatial resolution by fusing spatio-temporal observations derived from Sentinel-2, Landsat 8, and Terra MODIS. FuseTen employs a generative architecture trained using an averaging-based supervision strategy grounded in physical principles. It incorporates attention and normalization modules within the fusion process and uses a PatchGAN discriminator to enforce realism. Experiments across multiple dates show that FuseTen outperforms linear baselines, with an average 32.06% improvement in quantitative metrics and 31.42% in visual fidelity. To the best of our knowledge, this is the first non-linear method to generate daily LST estimates at such fine spatial resolution.

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