• 专利标题: DE-NOISING IMAGES USING MACHINE LEARNING
  • 申请号: US15630478
    申请日: 2017-06-22
  • 公开(公告)号: US20180293710A1
    公开(公告)日: 2018-10-11
  • 发明人: Mark MeyerAnthony DeRoseSteve Bako
  • 申请人: PIXAR
  • 申请人地址: US CA Emeryville
  • 专利权人: PIXAR
  • 当前专利权人: PIXAR
  • 当前专利权人地址: US CA Emeryville
  • 主分类号: G06T5/00
  • IPC分类号: G06T5/00
DE-NOISING IMAGES USING MACHINE LEARNING
摘要:
The present disclosure relates to using a neural network to efficiently denoise images that were generated by a ray tracer. The neural network can be trained using noisy images generated with noisy samples and corresponding denoised or high-sampled images (e.g., many random samples). An input feature to the neural network can include color from pixels of an image. Other input features to the neural network, which would not be known in normal image processing, can include shading normal, depth, albedo, and other characteristics available from a computer-generated scene. After the neural network is trained, a noisy image that the neural network has not seen before can have noise removed without needing manual intervention.
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