
Journal of Systems Engineering and Electronics ›› 2020, Vol. 31 ›› Issue (3): 578-592.doi: 10.23919/JSEE.2020.000026
• Systems Engineering • Previous Articles Next Articles
Received:2019-05-29
															
							
															
							
															
							
																	Online:2020-06-30
															
							
																	Published:2020-06-30
															
						Contact:
								Chao QIN   
																	E-mail:qinchaoaiziji@163.com;cxg2012@nwpu.edu.cn
																					About author:QIN Chao was born in 1991. He received his B.S. degree from Northwestern Polytechnical University in 2013. He is now a Ph.D. candidate in the School of Electronics and Information Engineering, Northwestern Polytechnical University. His research interests are deep learning and multi-agent control application. E-mail: Supported by:Chao QIN, Xiaoguang GAO. Distributed spatio-temporal generative adversarial networks[J]. Journal of Systems Engineering and Electronics, 2020, 31(3): 578-592.
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