论文标题
智能养鱼的深度学习:应用,机遇和挑战
Deep learning for smart fish farming: applications, opportunities and challenges
论文作者
论文摘要
随着深度学习(DL)技术的快速出现,它已成功地用于包括水产养殖在内的各个领域。这种变化可以为智能鱼类养殖中的信息和数据处理带来新的机会和一系列挑战。本文重点介绍了DL在水产养殖中的应用,包括活鱼识别,物种分类,行为分析,喂养决策,大小或生物量估计,水质预测。此外,还分析了应用于智能鱼类养殖的DL方法的技术细节,包括数据,算法,计算能力和性能。这篇综述的结果表明,DL的最重要贡献是能够自动提取特征的能力。但是,挑战仍然存在。 DL仍处于人工智能薄弱的时代。需要大量标记的数据进行培训,这已成为一种瓶颈,限制了水产养殖中的进一步DL应用。然而,DL在水产养殖中处理复杂数据方面仍然具有突破性。简而言之,我们的目的是为研究人员和从业人员更好地了解水产养殖中DL艺术的现状,这可以为实施智能养鱼的实施提供强有力的支持。
With the rapid emergence of deep learning (DL) technology, it has been successfully used in various fields including aquaculture. This change can create new opportunities and a series of challenges for information and data processing in smart fish farming. This paper focuses on the applications of DL in aquaculture, including live fish identification, species classification, behavioral analysis, feeding decision-making, size or biomass estimation, water quality prediction. In addition, the technical details of DL methods applied to smart fish farming are also analyzed, including data, algorithms, computing power, and performance. The results of this review show that the most significant contribution of DL is the ability to automatically extract features. However, challenges still exist; DL is still in an era of weak artificial intelligence. A large number of labeled data are needed for training, which has become a bottleneck restricting further DL applications in aquaculture. Nevertheless, DL still offers breakthroughs in the handling of complex data in aquaculture. In brief, our purpose is to provide researchers and practitioners with a better understanding of the current state of the art of DL in aquaculture, which can provide strong support for the implementation of smart fish farming.