Skeleton Based Action Recognition On Cad 120
평가 지표
Accuracy
평가 결과
이 벤치마크에서 각 모델의 성능 결과
모델 이름 | Accuracy | Paper Title | Repository |
---|---|---|---|
All Features (w ground truth) | 89.3% | Learning Spatio-Temporal Structure from RGB-D Videos for Human Activity Detection and Anticipation | - |
S-RNN (5-shot) | 85.4% | Structural-RNN: Deep Learning on Spatio-Temporal Graphs | |
P-LSTM (5-shot) | 68.1% | NTU RGB+D: A Large Scale Dataset for 3D Human Activity Analysis | |
NGM w/o Edges (5-shot) | 85.0% | Neural Graph Matching Networks for Fewshot 3D Action Recognition | - |
KGS | 86.0% | Learning Human Activities and Object Affordances from RGB-D Videos | - |
PointNet (5-shot) | 69.1% | PointNet: Deep Learning on Point Sets for 3D Classification and Segmentation | |
NGM (5-shot) | 91.1% | Neural Graph Matching Networks for Fewshot 3D Action Recognition | - |
Our DP seg. + moves + heuristic seg. | 70.3% | Learning Spatio-Temporal Structure from RGB-D Videos for Human Activity Detection and Anticipation | - |
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