Journal of South China University of Technology(Natural Science Edition) ›› 2022, Vol. 50 ›› Issue (12): 20-29.doi: 10.12141/j.issn.1000-565X.220055
Special Issue: 2022年计算机科学与技术
• Computer Science & Technology • Previous Articles Next Articles
DU Qiliang1,2,3 XIANG Zhaoyi1 TIAN Lianfang1,2,4 YU Lubin1
Received:
2022-02-11
Online:
2022-12-25
Published:
2022-04-08
Contact:
杜启亮(1980-),男,博士,副研究员,主要从事模式识别与机器视觉研究。
E-mail:qldu@scut.edu.cn
About author:
杜启亮(1980-),男,博士,副研究员,主要从事模式识别与机器视觉研究。
Supported by:
CLC Number:
DU Qiliang, XIANG Zhaoyi, TIAN Lianfang, et al. Two-Stream Adaptive Attention Graph Convolutional Networks for Action Recognition[J]. Journal of South China University of Technology(Natural Science Edition), 2022, 50(12): 20-29.
Table 4
Comparison of recognition performance on NTU RGB+D dataset"
方法 | 准确率/% | |
---|---|---|
CS | CV | |
Lie Group[ | 50.1 | 52.8 |
Deep LSTM[ | 60.7 | 67.3 |
ST-LSTM[ | 69.2 | 77.7 |
VA-LSTM[ | 79.2 | 87.7 |
IndRNN[ | 81.8 | 88.0 |
Clips+CNN+MTLN[ | 79.6 | 84.8 |
CNN+Motion+Trans[ | 83.2 | 89.3 |
3scale ResNet152[ | 85.0 | 92.3 |
Ta-CNN+[ | 90.7 | 95.1 |
ST-GCN[ | 81.5 | 88.3 |
DPRL+GCNN[ | 83.5 | 89.8 |
ST-GR[ | 86.9 | 92.3 |
2s-AGCN[ | 88.5 | 95.1 |
DHGCN[ | 90.7 | 96.0 |
CD-GCN[ | 90.9 | 96.5 |
MS-G3D[ | 91.5 | 96.2 |
AAGCN(J) | 91.2 | 96.7 |
AAGCN(B) | 91.6 | 96.9 |
2s-AAGCN | 92.3 | 97.5 |
Table 5
Comparison of recognition performance on Kinetics-Skeleton dataset"
方法 | 准确率/% | |
---|---|---|
Top1 | Top5 | |
Feature Enc[ | 14.9 | 25.8 |
Deep LSTM[ | 16.4 | 35.3 |
ST-GCN[ | 30.7 | 52.8 |
ST-GR[ | 33.6 | 56.1 |
2s-AGCN[ | 36.1 | 58.7 |
DGNN[ | 36.9 | 59.6 |
GCN-NAS[ | 37.1 | 60.1 |
Sym-GNN[ | 37.2 | 58.1 |
DHGCN[ | 37.7 | 60.6 |
MS-G3D[ | 38.0 | 60.9 |
AAGCN(J) | 37.3 | 60.1 |
AAGCN(B) | 36.9 | 59.5 |
2s-AAGCN | 39.8 | 62.4 |
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