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Classification and Recognition of Fish Farming by Extraction New Features to Control the Economic Aquatic Product

机译:提取新功能控制经济水产品鱼类农业的分类与认识

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With the rapid emergence of the technology of deep learning (DL), it was successfully used in different fields such as the aquatic product. New opportunities in addition to challenges can be created according to this change for helping data processing in the smart fish farm. This study focuses on deep learning applications and how to support different activities in aquatic like identification of the fish, species classification, feeding decision, behavior analysis, estimation size, and prediction of water quality. Power and performance of computing with the analyzed given data are applied in the proposed DL method within fish farming. Results of the proposed method show the significance of contributions in deep learning and how automatic features are extracted. Still, there is a big challenge of using deep learning in an era of artificial intelligence. Training of the proposed method used a large number of labeled images got from the Fish4Knowledge dataset. The proposed method based on suitable feature extracted from the fish achieved good results in terms of recognition rate and accuracy.
机译:随着深度学习技术的快速出现(DL),它已成功地用于不同领域,如水产品。除了挑战外,可以根据这种变化来创建新的机会,以帮助智能鱼类农场中的数据处理。本研究侧重于深度学习应用以及如何在水生等类别中支持不同的活动,物种分类,饲养决策,行为分析,估计大小和水质预测。使用分析的给定数据计算的功率和性能在鱼类养殖中的提议DL方法中应用。所提出的方法的结果表明了深度学习中贡献的重要性以及如何提取自动特征。尽管如此,在人工智能时代使用深入学习存在巨大挑战。培训所提出的方法使用Fish4knowledge数据集获得了大量标记的图像。基于从鱼中提取的合适特征的所提出的方法在识别率和准确性方面取得了良好的结果。

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