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Models/CoAGCN* (2-stream)

CoAGCN* (2-stream)

Reported on 64 benchmarks across 8 tasks · 1 paper

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

Computer Vision24 results

  • VideoonNTU RGB+D 120
    Accuracy (Cross-Setup)· 2022-03-21
    82
    best: 92.2 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • VideoonNTU RGB+D 120
    Accuracy (Cross-Subject)· 2022-03-21
    80.4
    best: 90.9 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • VideoonNTU RGB+D 120
    GFLOPS per prediction· 2022-03-21
    0.44
    best: 37.38 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • VideoonKinetics-Skeleton dataset
    Accuracy· 2022-03-21
    27.5
    best: 52.3 (Structured Keypoint Pooling (PPNv2 skeletons+objects))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • VideoonKinetics-Skeleton dataset
    GFLOPS per prediction· 2022-03-21
    0.25
    best: 26.91 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • VideoonNTU RGB+D
    Accuracy (CS)· 2022-03-21
    86
    best: 94.3 (Hulk(Finetune, ViT-L))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • VideoonNTU RGB+D
    Accuracy (CV)· 2022-03-21
    93.1
    best: 98.3 (ST-GCN [PYSKL, 2D Skeleton])
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • VideoonNTU RGB+D
    GFLOPs per pred· 2022-03-21
    0.44
    best: 16.73 (ST-GCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Temporal Action LocalizationonNTU RGB+D 120
    Accuracy (Cross-Setup)· 2022-03-21
    82
    best: 92.2 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Temporal Action LocalizationonNTU RGB+D 120
    Accuracy (Cross-Subject)· 2022-03-21
    80.4
    best: 90.9 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Temporal Action LocalizationonNTU RGB+D 120
    GFLOPS per prediction· 2022-03-21
    0.44
    best: 37.38 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Temporal Action LocalizationonKinetics-Skeleton dataset
    Accuracy· 2022-03-21
    27.5
    best: 52.3 (Structured Keypoint Pooling (PPNv2 skeletons+objects))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Temporal Action LocalizationonKinetics-Skeleton dataset
    GFLOPS per prediction· 2022-03-21
    0.25
    best: 26.91 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Temporal Action LocalizationonNTU RGB+D
    Accuracy (CS)· 2022-03-21
    86
    best: 94.3 (Hulk(Finetune, ViT-L))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Temporal Action LocalizationonNTU RGB+D
    Accuracy (CV)· 2022-03-21
    93.1
    best: 98.3 (ST-GCN [PYSKL, 2D Skeleton])
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Temporal Action LocalizationonNTU RGB+D
    GFLOPs per pred· 2022-03-21
    0.44
    best: 16.73 (ST-GCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action LocalizationonNTU RGB+D 120
    Accuracy (Cross-Setup)· 2022-03-21
    82
    best: 92.2 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action LocalizationonNTU RGB+D 120
    Accuracy (Cross-Subject)· 2022-03-21
    80.4
    best: 90.9 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action LocalizationonNTU RGB+D 120
    GFLOPS per prediction· 2022-03-21
    0.44
    best: 37.38 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action LocalizationonKinetics-Skeleton dataset
    Accuracy· 2022-03-21
    27.5
    best: 52.3 (Structured Keypoint Pooling (PPNv2 skeletons+objects))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action LocalizationonKinetics-Skeleton dataset
    GFLOPS per prediction· 2022-03-21
    0.25
    best: 26.91 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action LocalizationonNTU RGB+D
    Accuracy (CS)· 2022-03-21
    86
    best: 94.3 (Hulk(Finetune, ViT-L))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action LocalizationonNTU RGB+D
    Accuracy (CV)· 2022-03-21
    93.1
    best: 98.3 (ST-GCN [PYSKL, 2D Skeleton])
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action LocalizationonNTU RGB+D
    GFLOPs per pred· 2022-03-21
    0.44
    best: 16.73 (ST-GCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009

Time Series16 results

  • Action DetectiononNTU RGB+D 120
    Accuracy (Cross-Setup)· 2022-03-21
    82
    best: 92.2 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action DetectiononNTU RGB+D 120
    Accuracy (Cross-Subject)· 2022-03-21
    80.4
    best: 90.9 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action DetectiononNTU RGB+D 120
    GFLOPS per prediction· 2022-03-21
    0.44
    best: 37.38 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action DetectiononKinetics-Skeleton dataset
    Accuracy· 2022-03-21
    27.5
    best: 52.3 (Structured Keypoint Pooling (PPNv2 skeletons+objects))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action DetectiononKinetics-Skeleton dataset
    GFLOPS per prediction· 2022-03-21
    0.25
    best: 26.91 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action DetectiononNTU RGB+D
    Accuracy (CS)· 2022-03-21
    86
    best: 94.3 (Hulk(Finetune, ViT-L))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action DetectiononNTU RGB+D
    Accuracy (CV)· 2022-03-21
    93.1
    best: 98.3 (ST-GCN [PYSKL, 2D Skeleton])
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action DetectiononNTU RGB+D
    GFLOPs per pred· 2022-03-21
    0.44
    best: 16.73 (ST-GCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action RecognitiononNTU RGB+D 120
    Accuracy (Cross-Setup)· 2022-03-21
    82
    best: 96.7 (DSCNet (RGB + Pose))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action RecognitiononNTU RGB+D 120
    Accuracy (Cross-Subject)· 2022-03-21
    80.4
    best: 95.6 (DSCNet (RGB + Pose))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action RecognitiononNTU RGB+D 120
    GFLOPS per prediction· 2022-03-21
    0.44
    best: 37.38 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action RecognitiononKinetics-Skeleton dataset
    Accuracy· 2022-03-21
    27.5
    best: 52.3 (Structured Keypoint Pooling (PPNv2 skeletons+objects))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action RecognitiononKinetics-Skeleton dataset
    GFLOPS per prediction· 2022-03-21
    0.25
    best: 26.91 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action RecognitiononNTU RGB+D
    Accuracy (CS)· 2022-03-21
    86
    best: 97.4 (DSCNet (RGB + Pose))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action RecognitiononNTU RGB+D
    Accuracy (CV)· 2022-03-21
    93.1
    best: 99.6 (PoseC3D (RGB + Pose))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Action RecognitiononNTU RGB+D
    GFLOPs per pred· 2022-03-21
    0.44
    best: 16.73 (ST-GCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009

Methodology8 results

  • Zero-Shot LearningonNTU RGB+D 120
    Accuracy (Cross-Setup)· 2022-03-21
    82
    best: 92.2 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Zero-Shot LearningonNTU RGB+D 120
    Accuracy (Cross-Subject)· 2022-03-21
    80.4
    best: 90.9 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Zero-Shot LearningonNTU RGB+D 120
    GFLOPS per prediction· 2022-03-21
    0.44
    best: 37.38 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Zero-Shot LearningonKinetics-Skeleton dataset
    Accuracy· 2022-03-21
    27.5
    best: 52.3 (Structured Keypoint Pooling (PPNv2 skeletons+objects))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Zero-Shot LearningonKinetics-Skeleton dataset
    GFLOPS per prediction· 2022-03-21
    0.25
    best: 26.91 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Zero-Shot LearningonNTU RGB+D
    Accuracy (CS)· 2022-03-21
    86
    best: 94.3 (Hulk(Finetune, ViT-L))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Zero-Shot LearningonNTU RGB+D
    Accuracy (CV)· 2022-03-21
    93.1
    best: 98.3 (ST-GCN [PYSKL, 2D Skeleton])
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Zero-Shot LearningonNTU RGB+D
    GFLOPs per pred· 2022-03-21
    0.44
    best: 16.73 (ST-GCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009

Robots8 results

  • Activity RecognitiononNTU RGB+D 120
    Accuracy (Cross-Setup)· 2022-03-21
    82
    best: 96.7 (DSCNet (RGB + Pose))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Activity RecognitiononNTU RGB+D 120
    Accuracy (Cross-Subject)· 2022-03-21
    80.4
    best: 95.6 (DSCNet (RGB + Pose))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Activity RecognitiononNTU RGB+D 120
    GFLOPS per prediction· 2022-03-21
    0.44
    best: 37.38 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Activity RecognitiononKinetics-Skeleton dataset
    Accuracy· 2022-03-21
    27.5
    best: 52.3 (Structured Keypoint Pooling (PPNv2 skeletons+objects))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Activity RecognitiononKinetics-Skeleton dataset
    GFLOPS per prediction· 2022-03-21
    0.25
    best: 26.91 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Activity RecognitiononNTU RGB+D
    Accuracy (CS)· 2022-03-21
    86
    best: 97.4 (DSCNet (RGB + Pose))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Activity RecognitiononNTU RGB+D
    Accuracy (CV)· 2022-03-21
    93.1
    best: 99.6 (PoseC3D (RGB + Pose))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • Activity RecognitiononNTU RGB+D
    GFLOPs per pred· 2022-03-21
    0.44
    best: 16.73 (ST-GCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009

Natural Language Processing8 results

  • 3D Action RecognitiononNTU RGB+D 120
    Accuracy (Cross-Setup)· 2022-03-21
    82
    best: 92.2 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • 3D Action RecognitiononNTU RGB+D 120
    Accuracy (Cross-Subject)· 2022-03-21
    80.4
    best: 90.9 (ProtoGCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • 3D Action RecognitiononNTU RGB+D 120
    GFLOPS per prediction· 2022-03-21
    0.44
    best: 37.38 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • 3D Action RecognitiononKinetics-Skeleton dataset
    Accuracy· 2022-03-21
    27.5
    best: 52.3 (Structured Keypoint Pooling (PPNv2 skeletons+objects))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • 3D Action RecognitiononKinetics-Skeleton dataset
    GFLOPS per prediction· 2022-03-21
    0.25
    best: 26.91 (AGCN (2-stream))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • 3D Action RecognitiononNTU RGB+D
    Accuracy (CS)· 2022-03-21
    86
    best: 94.3 (Hulk(Finetune, ViT-L))
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • 3D Action RecognitiononNTU RGB+D
    Accuracy (CV)· 2022-03-21
    93.1
    best: 98.3 (ST-GCN [PYSKL, 2D Skeleton])
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009
  • 3D Action RecognitiononNTU RGB+D
    GFLOPs per pred· 2022-03-21
    0.44
    best: 16.73 (ST-GCN)
    Continual Spatio-Temporal Graph Convolutional NetworksarXiv:2203.11009