Telecommunications Science ›› 2020, Vol. 36 ›› Issue (10): 56-66.doi: 10.11959/j.issn.1000-0801.2020290
• Topic:Intelligent Communication Technology • Previous Articles Next Articles
Tianjie MU,Xiaohui CHEN,Yiyun WANG,Lupeng MA,Dong LIU,Jing ZHOU,Wenyi ZHANG
Revised:
2020-10-10
Online:
2020-10-20
Published:
2020-11-07
Supported by:
CLC Number:
Tianjie MU,Xiaohui CHEN,Yiyun WANG,Lupeng MA,Dong LIU,Jing ZHOU,Wenyi ZHANG. A survey on deep learning based joint source-channel coding[J]. Telecommunications Science, 2020, 36(10): 56-66.
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