TDg derives thermal radiance fields from thermal images and depth estimation, reporting minor gains over the MSMG baseline (LPIPS +1.12%, SSIM +0.034%, PSNR +0.01%) and 55% faster training on two datasets.
ThermalGaussian: Thermal 3D gaussian splatting.arXiv preprint arXiv:2409.07200, 2024
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Supercharging Thermal Gaussian Splatting with Depth Estimation
TDg derives thermal radiance fields from thermal images and depth estimation, reporting minor gains over the MSMG baseline (LPIPS +1.12%, SSIM +0.034%, PSNR +0.01%) and 55% faster training on two datasets.