Journal of Computer Applications ›› 2023, Vol. 43 ›› Issue (6): 1785-1795.DOI: 10.11772/j.issn.1001-9081.2022050766
• Artificial intelligence • Previous Articles Next Articles
					
						                                                                                                                                                                                    Yichi CHEN1,2, Bin CHEN2,3,4( )
)
												  
						
						
						
					
				
Received:2022-05-27
															
							
																	Revised:2022-09-27
															
							
																	Accepted:2022-10-13
															
							
							
																	Online:2023-06-08
															
							
																	Published:2023-06-10
															
							
						Contact:
								Bin CHEN   
													About author:CHEN Yichi, born in 1997, Ph. D. candidate. His research interests include computer vision, lifelong learning.				
													Supported by:通讯作者:
					陈斌
							作者简介:陈一驰(1997—),男,湖南岳阳人,博士研究生,主要研究方向:计算机视觉、终身学习CLC Number:
Yichi CHEN, Bin CHEN. Review of lifelong learning in computer vision[J]. Journal of Computer Applications, 2023, 43(6): 1785-1795.
陈一驰, 陈斌. 计算机视觉中的终身学习综述[J]. 《计算机应用》唯一官方网站, 2023, 43(6): 1785-1795.
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URL: https://www.joca.cn/EN/10.11772/j.issn.1001-9081.2022050766
| 主要方法 | 子方法 | 
|---|---|
| 基于数据驱动的终身学习 | 存储任务子集 | 
| 生成任务数据 | |
| 基于优化过程的终身学习 | 损失函数设计 | 
| 梯度更新 | |
| 学习率更新 | |
| 基于网络结构的终身学习 | 静态结构 | 
| 动态结构 | |
| 基于知识组合的终身学习 | 以上方法的组合 | 
Tab. 1 Classification of lifelong learning methods
| 主要方法 | 子方法 | 
|---|---|
| 基于数据驱动的终身学习 | 存储任务子集 | 
| 生成任务数据 | |
| 基于优化过程的终身学习 | 损失函数设计 | 
| 梯度更新 | |
| 学习率更新 | |
| 基于网络结构的终身学习 | 静态结构 | 
| 动态结构 | |
| 基于知识组合的终身学习 | 以上方法的组合 | 
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