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Models/SW

SW

Reported on 11 benchmarks across 7 tasks · 2 papers · 11 SOTA

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

Methodology7 results

  • 3DonDWD
    mPC [AP50]· 2019-04-22
    26.1
    best: 40.5 (GDD (SD-1.5 Backbone))
    SOTA
    Switchable Whitening for Deep Representation LearningarXiv:1904.09739
  • 2D ClassificationonDWD
    mPC [AP50]· 2019-04-22
    26.1
    best: 40.5 (GDD (SD-1.5 Backbone))
    SOTA
    Switchable Whitening for Deep Representation LearningarXiv:1904.09739
  • 2D Object DetectiononDWD
    mPC [AP50]· 2019-04-22
    26.1
    best: 40.5 (GDD (SD-1.5 Backbone))
    SOTA
    Switchable Whitening for Deep Representation LearningarXiv:1904.09739
  • 16konDWD
    mPC [AP50]· 2019-04-22
    26.1
    best: 40.5 (GDD (SD-1.5 Backbone))
    SOTA
    Switchable Whitening for Deep Representation LearningarXiv:1904.09739
  • ClassificationonNEURON-MULTI
    Accuracy· 2017-06-11
    57.3
    best: 69.1 (WKPI-kcenters)
    SOTA
    Sliced Wasserstein Kernel for Persistence DiagramsarXiv:1706.03358
  • ClassificationonNEURON-BINARY
    Accuracy· 2017-06-11
    85.1
    best: 90.3 (WKPI-kmeans)
    SOTA
    Sliced Wasserstein Kernel for Persistence DiagramsarXiv:1706.03358
  • ClassificationonNEURON-Average
    Accuracy· 2017-06-11
    71.2
    best: 77.8 (WKPI-kcenters)
    SOTA
    Sliced Wasserstein Kernel for Persistence DiagramsarXiv:1706.03358

Graphs3 results

  • Graph ClassificationonNEURON-MULTI
    Accuracy· 2017-06-11
    57.3
    best: 69.1 (WKPI-kcenters)
    SOTA
    Sliced Wasserstein Kernel for Persistence DiagramsarXiv:1706.03358
  • Graph ClassificationonNEURON-BINARY
    Accuracy· 2017-06-11
    85.1
    best: 90.3 (WKPI-kmeans)
    SOTA
    Sliced Wasserstein Kernel for Persistence DiagramsarXiv:1706.03358
  • Graph ClassificationonNEURON-Average
    Accuracy· 2017-06-11
    71.2
    best: 77.8 (WKPI-kcenters)
    SOTA
    Sliced Wasserstein Kernel for Persistence DiagramsarXiv:1706.03358

Computer Vision1 result

  • Object DetectiononDWD
    mPC [AP50]· 2019-04-22
    26.1
    best: 40.5 (GDD (SD-1.5 Backbone))
    SOTA
    Switchable Whitening for Deep Representation LearningarXiv:1904.09739