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Models/DRANet

DRANet

Reported on 14 benchmarks across 4 tasks · 2 papers · 7 SOTA

Note: results are matched by exact model name. Different papers may use the same name for different model variants.

Computer Vision4 results

  • DenoisingonDND
    Average PSNR· 2023-05-07
    39.64
    SOTA
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269
  • DenoisingonSIDD
    Average PSNR· 2023-05-07
    39.5
    SOTA
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269
  • DenoisingonDND
    SSIM (sRGB)· 2023-05-07
    0.952
    best: 0.966 (DualDn)
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269
  • DenoisingonSIDD
    SSIM (sRGB)· 2023-05-07
    0.957
    best: 0.973 (NBNet)
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269

Adversarial4 results

  • 3D ArchitectureonDND
    Average PSNR· 2023-05-07
    39.64
    SOTA
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269
  • 3D ArchitectureonSIDD
    Average PSNR· 2023-05-07
    39.5
    SOTA
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269
  • 3D ArchitectureonDND
    SSIM (sRGB)· 2023-05-07
    0.952
    best: 0.966 (DualDn)
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269
  • 3D ArchitectureonSIDD
    SSIM (sRGB)· 2023-05-07
    0.957
    best: 0.973 (NBNet)
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269

Methodology4 results

  • Domain AdaptationonMNIST-M-to-MNIST
    Accuracy· 2021-03-24
    99.3
    SOTA
    DRANet: Disentangling Representation and Adaptation Networks for Unsupervised Cross-Domain AdaptationarXiv:2103.13447
  • Domain AdaptationonMNIST-to-MNIST-M
    Accuracy· 2021-03-24
    98.7
    SOTA
    DRANet: Disentangling Representation and Adaptation Networks for Unsupervised Cross-Domain AdaptationarXiv:2103.13447
  • Domain AdaptationonUSPS-to-MNIST
    Accuracy· 2021-03-24
    97.8
    best: 98.75 (FAMCD)
    DRANet: Disentangling Representation and Adaptation Networks for Unsupervised Cross-Domain AdaptationarXiv:2103.13447
  • Domain AdaptationonMNIST-to-USPS
    Accuracy· 2021-03-24
    98.2
    best: 98.8 (FACT)
    DRANet: Disentangling Representation and Adaptation Networks for Unsupervised Cross-Domain AdaptationarXiv:2103.13447

Medical2 results

  • Image DenoisingonSIDD
    Average PSNR· 2023-05-07
    39.5
    SOTA
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269
  • Image DenoisingonSIDD
    SSIM (sRGB)· 2023-05-07
    0.957
    best: 0.973 (NBNet)
    Dual Residual Attention Network for Image DenoisingarXiv:2305.04269