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Models/MixFormerV2-B

MixFormerV2-B

Reported on 16 benchmarks across 2 tasks

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

Computer Vision16 results

  • Object TrackingonTNL2K
    AUC
    57.4
    best: 65.3 (MCITrack-L384)
  • Object TrackingonTNL2K
    precision
    58.4
    best: 70.6 (SPMTrack-G)
  • Object TrackingonLaSOT
    AUC
    70.6
    best: 77.4 (SPMTrack-G)
  • Object TrackingonLaSOT
    Normalized Precision
    80.8
    best: 86.6 (SPMTrack-G)
  • Object TrackingonLaSOT
    Precision
    76.2
    best: 85 (SPMTrack-G)
  • Object TrackingonTrackingNet
    Accuracy
    83.4
    best: 87.9 (MCITrack-L384)
  • Object TrackingonTrackingNet
    Normalized Precision
    88.1
    best: 92.1 (MCITrack-L384)
  • Object TrackingonTrackingNet
    Precision
    81.6
    best: 89.2 (MCITrack-L384)
  • Visual Object TrackingonTNL2K
    AUC
    57.4
    best: 65.3 (MCITrack-L384)
  • Visual Object TrackingonTNL2K
    precision
    58.4
    best: 70.6 (SPMTrack-G)
  • Visual Object TrackingonLaSOT
    AUC
    70.6
    best: 77.4 (SPMTrack-G)
  • Visual Object TrackingonLaSOT
    Normalized Precision
    80.8
    best: 86.6 (SPMTrack-G)
  • Visual Object TrackingonLaSOT
    Precision
    76.2
    best: 85 (SPMTrack-G)
  • Visual Object TrackingonTrackingNet
    Accuracy
    83.4
    best: 87.9 (MCITrack-L384)
  • Visual Object TrackingonTrackingNet
    Normalized Precision
    88.1
    best: 92.1 (MCITrack-L384)
  • Visual Object TrackingonTrackingNet
    Precision
    81.6
    best: 89.2 (MCITrack-L384)