Diffusion with Forward Models
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Diffusion With Forward Models
Overview :
This product is a novel denoising diffusion probabilistic model that learns to sample from an unobserved signal distribution instead of directly observing it. It measures samples from the known differentiable forward model. It can directly sample from a partially observed unknown signal distribution and is suitable for computer vision tasks. In inverse graphics, it can generate a 3D scene distribution consistent with a single 2D input image. The product offers flexible pricing and targets the image processing and computer vision domains.
Target Users :
Suitable for 3D scene reconstruction and image denoising tasks in computer vision.
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Use Cases
3D scene reconstruction in computer vision tasks
Applications in image denoising tasks
Other application scenarios in computer vision
Features
Samples directly from an unobserved signal distribution
Measures samples through a known differentiable forward model
Suitable for computer vision tasks
Generates a 3D scene distribution consistent with a single 2D input image in inverse graphics
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