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Models/YOLOv4 (CD53)

YOLOv4 (CD53)

Reported on 30 benchmarks across 5 tasks · 1 paper

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

Methodology24 results

  • 3DonCOCO test-dev
    AP50· uses extra data· 2020-11-16
    64.1
    best: 95 (ViTPose (ViTAE-G, ensemble))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 3DonCOCO test-dev
    AP75· uses extra data· 2020-11-16
    49.5
    best: 88.2 (ViTPose (ViTAE-G, ensemble))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 3DonCOCO test-dev
    APL· uses extra data· 2020-11-16
    56.7
    best: 86.5 (PoseBH-H)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 3DonCOCO test-dev
    APM· uses extra data· 2020-11-16
    49
    best: 83.8 (4xRSN-50 (ensemble))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 3DonCOCO test-dev
    APS· uses extra data· 2020-11-16
    27
    best: 48.6 (Focal-Stable-DINO (Focal-Huge, no TTA))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 3DonCOCO test-dev
    box mAP· uses extra data· 2020-11-16
    45.5
    best: 66 (Co-DETR)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D ClassificationonCOCO test-dev
    AP50· uses extra data· 2020-11-16
    64.1
    best: 82.1 (Plain-DETR (Swin-L))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D ClassificationonCOCO test-dev
    AP75· uses extra data· 2020-11-16
    49.5
    best: 71.7 (EVA)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D ClassificationonCOCO test-dev
    APL· uses extra data· 2020-11-16
    56.7
    best: 78 (Focal-Stable-DINO (Focal-Huge, no TTA))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D ClassificationonCOCO test-dev
    APM· uses extra data· 2020-11-16
    49
    best: 67.7 (EVA)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D ClassificationonCOCO test-dev
    APS· uses extra data· 2020-11-16
    27
    best: 48.6 (Focal-Stable-DINO (Focal-Huge, no TTA))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D ClassificationonCOCO test-dev
    box mAP· uses extra data· 2020-11-16
    45.5
    best: 66 (Co-DETR)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D Object DetectiononCOCO test-dev
    AP50· uses extra data· 2020-11-16
    64.1
    best: 82.1 (Plain-DETR (Swin-L))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D Object DetectiononCOCO test-dev
    AP75· uses extra data· 2020-11-16
    49.5
    best: 71.7 (EVA)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D Object DetectiononCOCO test-dev
    APL· uses extra data· 2020-11-16
    56.7
    best: 78 (Focal-Stable-DINO (Focal-Huge, no TTA))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D Object DetectiononCOCO test-dev
    APM· uses extra data· 2020-11-16
    49
    best: 67.7 (EVA)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D Object DetectiononCOCO test-dev
    APS· uses extra data· 2020-11-16
    27
    best: 48.6 (Focal-Stable-DINO (Focal-Huge, no TTA))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 2D Object DetectiononCOCO test-dev
    box mAP· uses extra data· 2020-11-16
    45.5
    best: 66 (Co-DETR)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 16konCOCO test-dev
    AP50· uses extra data· 2020-11-16
    64.1
    best: 82.1 (Plain-DETR (Swin-L))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 16konCOCO test-dev
    AP75· uses extra data· 2020-11-16
    49.5
    best: 71.7 (EVA)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 16konCOCO test-dev
    APL· uses extra data· 2020-11-16
    56.7
    best: 78 (Focal-Stable-DINO (Focal-Huge, no TTA))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 16konCOCO test-dev
    APM· uses extra data· 2020-11-16
    49
    best: 67.7 (EVA)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 16konCOCO test-dev
    APS· uses extra data· 2020-11-16
    27
    best: 48.6 (Focal-Stable-DINO (Focal-Huge, no TTA))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • 16konCOCO test-dev
    box mAP· uses extra data· 2020-11-16
    45.5
    best: 66 (Co-DETR)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036

Computer Vision6 results

  • Object DetectiononCOCO test-dev
    AP50· uses extra data· 2020-11-16
    64.1
    best: 82.1 (Plain-DETR (Swin-L))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • Object DetectiononCOCO test-dev
    AP75· uses extra data· 2020-11-16
    49.5
    best: 71.7 (EVA)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • Object DetectiononCOCO test-dev
    APL· uses extra data· 2020-11-16
    56.7
    best: 78 (Focal-Stable-DINO (Focal-Huge, no TTA))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • Object DetectiononCOCO test-dev
    APM· uses extra data· 2020-11-16
    49
    best: 67.7 (EVA)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • Object DetectiononCOCO test-dev
    APS· uses extra data· 2020-11-16
    27
    best: 48.6 (Focal-Stable-DINO (Focal-Huge, no TTA))
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036
  • Object DetectiononCOCO test-dev
    box mAP· uses extra data· 2020-11-16
    45.5
    best: 66 (Co-DETR)
    Scaled-YOLOv4: Scaling Cross Stage Partial NetworkarXiv:2011.08036