Table 2.
Method | NTU-60 (CSub) | NTU-60 (CView) | NTU-120 (CSub) | NTU-120 (CSet) |
---|---|---|---|---|
Supervised pose-based | ||||
HOPC [31] | 50.1% | 52.8% | - | - |
HBRNN [20] | 59.1% | 64.0% | - | - |
P-LSTM [32] | 62.9% | 70.3% | 25.5% | 26.3% |
Soft RNN [33] | - | - | 36.3% | 44.9% |
ST-LSTM [34] | 69.2% | 77.7% | 55.7% | 57.9% |
VA-RNN-Aug [35] | 79.4% | 87.6% | - | - |
ST-GCN [26] | 81.5% | 88.3% | - | - |
IndRNN [36] | 81.8% | 88.0% | - | - |
HCN [37] | 86.5% | 91.1% | - | - |
PEM [38] | - | - | 64.6% | 66.9% |
AS-GCN [11] | 86.8% | 94.2% | - | - |
ST-GR [39] | 86.9% | 92.3% | - | - |
DGNN [40] | 87.5% | 94.3% | - | - |
2s-AGCN [27] | 88.5% | 95.1% | 82.9% | 84.9% |
AGC-LSTM [41] | 89.2% | 95.0% | - | - |
MS-G3D [42] | 91.5% | 96.2% | 86.9% | 88.4% |
Unsupervised RGBD-based | ||||
Shuffle and learn [43] | 46.2% | 40.9% | - | - |
Luo et al. [44] | 61.4% | 53.2% | - | - |
Li et al. [45] | 68.1% | 63.9% | - | - |
Unsupervised pose-based | ||||
LongT GAN [14] | 39.1% | 48.1% | - | - |
CAE* [30] | - | - | 48.3% | 49.2% |
P&C FW-AEC [16] | 50.7% | 76.1% | - | - |
MS2L [28] | 52.6% | - | - | - |
PDF-G (ours) | 59.7% | 81.0% | 48.2% | 50.9% |
PDF-G* (ours) | 60.4% | 81.5% | 48.5% | 51.3% |