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Models/ATF

ATF

Reported on 25 benchmarks across 5 tasks

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

Computer Vision10 results

  • Face Reconstructionon300W
    NME_inter-ocular (%, Challenge)· uses extra data
    4.89
    best: 8.2 (ASMNet)
  • Face Reconstructionon300W
    NME_inter-ocular (%, Common)· uses extra data
    2.75
    best: 5.09 (3DDFA)
  • Face Reconstructionon300W
    NME_inter-ocular (%, Full)· uses extra data
    3.17
    best: 5.63 (3DDFA)
  • Face ReconstructiononWFW (Extra Data)
    NME (inter-ocular)· uses extra data
    4.49
    best: 4.57 (VGG-F)
  • Face ReconstructiononAFLW-19
    NME_diag (%, Full)· uses extra data
    1.55
    best: 3.92 (CFSS)
  • 3D Face ReconstructiononWFW (Extra Data)
    NME (inter-ocular)· uses extra data
    4.49
    best: 4.57 (VGG-F)
  • 3D Face ReconstructiononAFLW-19
    NME_diag (%, Full)· uses extra data
    1.55
    best: 3.92 (CFSS)
  • 3D Face Reconstructionon300W
    NME_inter-ocular (%, Challenge)· uses extra data
    4.89
    best: 8.2 (ASMNet)
  • 3D Face Reconstructionon300W
    NME_inter-ocular (%, Common)· uses extra data
    2.75
    best: 5.09 (3DDFA)
  • 3D Face Reconstructionon300W
    NME_inter-ocular (%, Full)· uses extra data
    3.17
    best: 5.63 (3DDFA)

Music5 results

  • Facial Recognition and ModellingonWFW (Extra Data)
    NME (inter-ocular)· uses extra data
    4.49
    best: 4.57 (VGG-F)
  • Facial Recognition and ModellingonAFLW-19
    NME_diag (%, Full)· uses extra data
    1.55
    best: 3.92 (CFSS)
  • Facial Recognition and Modellingon300W
    NME_inter-ocular (%, Challenge)· uses extra data
    4.89
    best: 8.2 (ASMNet)
  • Facial Recognition and Modellingon300W
    NME_inter-ocular (%, Common)· uses extra data
    2.75
    best: 5.09 (3DDFA)
  • Facial Recognition and Modellingon300W
    NME_inter-ocular (%, Full)· uses extra data
    3.17
    best: 5.63 (3DDFA)

Methodology5 results

  • 3Don300W
    NME_inter-ocular (%, Challenge)· uses extra data
    4.89
    best: 8.2 (ASMNet)
  • 3Don300W
    NME_inter-ocular (%, Common)· uses extra data
    2.75
    best: 5.09 (3DDFA)
  • 3Don300W
    NME_inter-ocular (%, Full)· uses extra data
    3.17
    best: 5.63 (3DDFA)
  • 3DonWFW (Extra Data)
    NME (inter-ocular)· uses extra data
    4.49
    best: 4.57 (VGG-F)
  • 3DonAFLW-19
    NME_diag (%, Full)· uses extra data
    1.55
    best: 3.92 (CFSS)

Medical5 results

  • 3D Face ModellingonWFW (Extra Data)
    NME (inter-ocular)· uses extra data
    4.49
    best: 4.57 (VGG-F)
  • 3D Face ModellingonAFLW-19
    NME_diag (%, Full)· uses extra data
    1.55
    best: 3.92 (CFSS)
  • 3D Face Modellingon300W
    NME_inter-ocular (%, Challenge)· uses extra data
    4.89
    best: 8.2 (ASMNet)
  • 3D Face Modellingon300W
    NME_inter-ocular (%, Common)· uses extra data
    2.75
    best: 5.09 (3DDFA)
  • 3D Face Modellingon300W
    NME_inter-ocular (%, Full)· uses extra data
    3.17
    best: 5.63 (3DDFA)