Journal of Computer Applications ›› 2024, Vol. 44 ›› Issue (7): 2041-2046.DOI: 10.11772/j.issn.1001-9081.2023070970
• Artificial intelligence • Previous Articles Next Articles
					
						                                                                                                                                                                                                                    Hao CHAO, Shuqi FENG( ), Yongli LIU
), Yongli LIU
												  
						
						
						
					
				
Received:2023-07-19
															
							
																	Revised:2023-09-25
															
							
																	Accepted:2023-09-26
															
							
							
																	Online:2023-10-26
															
							
																	Published:2024-07-10
															
							
						Contact:
								Shuqi FENG   
													About author:CHAO Hao, born in 1981, Ph. D., associate professor. His research interests include pattern recognition, affective calculation, speech recognition.Supported by:通讯作者:
					封舒琪
							作者简介:晁浩(1981—)男,河南许昌人,副教授,博士,CCF会员,主要研究方向:模式识别、情感计算、语音识别;基金资助:CLC Number:
Hao CHAO, Shuqi FENG, Yongli LIU. Convolutional recurrent neural network optimized by multiple context vectors in EEG-based emotion recognition[J]. Journal of Computer Applications, 2024, 44(7): 2041-2046.
晁浩, 封舒琪, 刘永利. 脑电情感识别中多上下文向量优化的卷积递归神经网络[J]. 《计算机应用》唯一官方网站, 2024, 44(7): 2041-2046.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2023070970
| 网络模型 | 单个网络与集成网络 | 唤醒维度 | 效价维度 | ||
|---|---|---|---|---|---|
| 准确率 | F1分数 | 准确率 | F1分数 | ||
| G1 | CRNN1 | 75.97 | 76.21 | 74.53 | 75.16 | 
| CR-MCV1 | 78.05 | 80.36 | 78.21 | 80.13 | |
| G2 | CRNN2 | 76.11 | 75.57 | 78.14 | 77.91 | 
| CR-MCV2 | 82.65 | 82.83 | 82.13 | 82.66 | |
| G3 | CRNN3 | 72.32 | 72.01 | 73.07 | 73.41 | 
| CR-MCV3 | 80.23 | 81.22 | 81.39 | 82.51 | |
| G4 | CRNN4 | 82.17 | 82.51 | 81.28 | 81.87 | 
| CR-MCV4 | 88.09 | 90.31 | 89.31 | 90.11 | |
Tab. 1 Performance comparison of single network and ensemble network
| 网络模型 | 单个网络与集成网络 | 唤醒维度 | 效价维度 | ||
|---|---|---|---|---|---|
| 准确率 | F1分数 | 准确率 | F1分数 | ||
| G1 | CRNN1 | 75.97 | 76.21 | 74.53 | 75.16 | 
| CR-MCV1 | 78.05 | 80.36 | 78.21 | 80.13 | |
| G2 | CRNN2 | 76.11 | 75.57 | 78.14 | 77.91 | 
| CR-MCV2 | 82.65 | 82.83 | 82.13 | 82.66 | |
| G3 | CRNN3 | 72.32 | 72.01 | 73.07 | 73.41 | 
| CR-MCV3 | 80.23 | 81.22 | 81.39 | 82.51 | |
| G4 | CRNN4 | 82.17 | 82.51 | 81.28 | 81.87 | 
| CR-MCV4 | 88.09 | 90.31 | 89.31 | 90.11 | |
| 网络模型 | 注意力头数 | 唤醒维度 | 效价维度 | ||
|---|---|---|---|---|---|
| 准确率 | F1分数 | 准确率 | F1分数 | ||
| M1 | 1 | 85.17 | 85.81 | 85.03 | 85.44 | 
| M2 | 2 | 85.12 | 86.33 | 84.45 | 85.01 | 
| M4 | 4 | 85.31 | 85.01 | 81.72 | 81.02 | 
| M8 | 8 | 88.09 | 90.31 | 89.30 | 90.11 | 
| M16 | 16 | 87.34 | 87.61 | 87.55 | 87.22 | 
Tab. 2 Performance comparison of different attention heads in arousal dimension and valence dimension
| 网络模型 | 注意力头数 | 唤醒维度 | 效价维度 | ||
|---|---|---|---|---|---|
| 准确率 | F1分数 | 准确率 | F1分数 | ||
| M1 | 1 | 85.17 | 85.81 | 85.03 | 85.44 | 
| M2 | 2 | 85.12 | 86.33 | 84.45 | 85.01 | 
| M4 | 4 | 85.31 | 85.01 | 81.72 | 81.02 | 
| M8 | 8 | 88.09 | 90.31 | 89.30 | 90.11 | 
| M16 | 16 | 87.34 | 87.61 | 87.55 | 87.22 | 
| 网络模型 | 上下文向量 | 唤醒维度 | 效价维度 | ||
|---|---|---|---|---|---|
| 准确率 | F1分数 | 准确率 | F1分数 | ||
| CRNN | 无 | 80.17 | 81.50 | 81.28 | 81.87 | 
| Mm8 | 81.63 | 81.12 | 82.23 | 81.65 | |
| Ml8 | 83.91 | 83.33 | 85.49 | 85.01 | |
| Mf8 | 84.53 | 85.98 | 86.95 | 88.56 | |
| CR-MCV | 88.09 | 90.31 | 89.30 | 90.11 | |
Tab. 3 Performance comparison of different context vectors in arousal dimension and valence dimension
| 网络模型 | 上下文向量 | 唤醒维度 | 效价维度 | ||
|---|---|---|---|---|---|
| 准确率 | F1分数 | 准确率 | F1分数 | ||
| CRNN | 无 | 80.17 | 81.50 | 81.28 | 81.87 | 
| Mm8 | 81.63 | 81.12 | 82.23 | 81.65 | |
| Ml8 | 83.91 | 83.33 | 85.49 | 85.01 | |
| Mf8 | 84.53 | 85.98 | 86.95 | 88.56 | |
| CR-MCV | 88.09 | 90.31 | 89.30 | 90.11 | |
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