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For the task of single image 3d reconstruction(using 2d supervision), as outlined in the tech report of Pytorch 3d, did you train a single model for all the ShapeNet categories or separate models for different categories?
In the fit_textured_mesh tutorial, I observe that the RGB loss only affects the texture and not the shape. Is that expected? There will be cases when the texture of a 2d object image provides strong signals for shape, which silhouette doesn't, especially when we have limited silhouettes of an instance.
Would really help if you can provide the code for the experiment mentioned in (1). Thanks!