A conditional U-Net with weather conditioning at the bottleneck plus pre- and post-processing translates aerial RGB to thermal images, reaching PSNR 14.55, SSIM 0.81, LPIPS 0.17 and outperforming the ThermalGen baseline on a held-out test set.
Image-to-image translation with conditional adversarial networks,
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A Conditional U-Net Pipeline with Pre- and Post-Processing for Aerial RGB-to-Thermal Image Translation
A conditional U-Net with weather conditioning at the bottleneck plus pre- and post-processing translates aerial RGB to thermal images, reaching PSNR 14.55, SSIM 0.81, LPIPS 0.17 and outperforming the ThermalGen baseline on a held-out test set.