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Models/CSP (with offset) + ResNet-50

CSP (with offset) + ResNet-50

Reported on 14 benchmarks across 2 tasks · 1 paper

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

Robots7 results

  • Autonomous VehiclesonCityPersons
    Bare MR^-2· 2019-04-05
    7.3
    best: 10 (TLL)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Autonomous VehiclesonCityPersons
    Heavy MR^-2· 2019-04-05
    49.3
    best: 56.9 (RepLoss)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Autonomous VehiclesonCityPersons
    Large MR^-2· 2019-04-05
    6.5
    best: 8 (FRCNN+Seg)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Autonomous VehiclesonCityPersons
    Medium MR^-2· 2019-04-05
    3.7
    best: 7.2 (FRCNN)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Autonomous VehiclesonCityPersons
    Partial MR^-2· 2019-04-05
    10.4
    best: 17.2 (TLL)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Autonomous VehiclesonCityPersons
    Reasonable MR^-2· 2019-04-05
    11
    best: 15.5 (TLL)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Autonomous VehiclesonCityPersons
    Small MR^-2· 2019-04-05
    16
    best: 25.6 (FRCNN)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948

Computer Vision7 results

  • Pedestrian DetectiononCityPersons
    Bare MR^-2· 2019-04-05
    7.3
    best: 10 (TLL)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Pedestrian DetectiononCityPersons
    Heavy MR^-2· 2019-04-05
    49.3
    best: 56.9 (RepLoss)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Pedestrian DetectiononCityPersons
    Large MR^-2· 2019-04-05
    6.5
    best: 8 (FRCNN+Seg)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Pedestrian DetectiononCityPersons
    Medium MR^-2· 2019-04-05
    3.7
    best: 7.2 (FRCNN)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Pedestrian DetectiononCityPersons
    Partial MR^-2· 2019-04-05
    10.4
    best: 17.2 (TLL)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Pedestrian DetectiononCityPersons
    Reasonable MR^-2· 2019-04-05
    11
    best: 15.5 (TLL)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948
  • Pedestrian DetectiononCityPersons
    Small MR^-2· 2019-04-05
    16
    best: 25.6 (FRCNN)
    Center and Scale Prediction: Anchor-free Approach for Pedestrian and Face DetectionarXiv:1904.02948