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@brianshaler
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I imagine random_background with a flat color works for most use-cases with masked inputs. I had an instance where I needed to train on opaque RGBs that were pre-composited with a known background that I could also pass in as the background when training.

This is probably more generally useful for rasterization.

Try it out with noise:

background = torch.rand((3, viewpoint_camera.image_height, viewpoint_camera.image_width), dtype=torch.float32, device="cuda")

@aixiaodewugege
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Thanks for your brilliant work. Does the original version not support a custom background? Is there any document explain it?

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2 participants