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Supplementary Material for Neural-PIL: Neural Pre-Integrated Lighting for Reflectance Decomposition
Our main reconstruction loss is an MSE between the rendered color c and the corresponding pixel in the input image. This loss is then exponentially faded over 100,000 steps to a cosine weighted MSE: (x ωo n ˆxωo n)2. This weighting tends to achieve better BRDF fitting results [4] as harsh grazing highlights from the Fresnel effect are not factored as much as regular samples, as well as our approximated rendering model being the least accurate in the grazing angles. The reason for this fading loss scheme is that the normals nare not reliable in the early stages of the training.