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朱国平,等                                                                水产学报, 2025, 49(11): 119102

              解决深度学习对海量数据的需求,数据共享是                                  of  the  2007  Conference  on  Emerging  Artificial  Intelligence
              一条必经之路。目前可开放获取的鱼类数据集                                  Applications in Computer Engineering: Real Word AI Systems
              较少,鱼类耳石数据集更是稀少,且无统一的                                  with  Applications  in  eHealth,  HCI,  Information  Retrieval  and
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              https://www.china-fishery.cn                           中国水产学会主办    sponsored by China Society of Fisheries
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