Feeding intensity identification method for pond fish school using dual-label and MobileViT-SENet

IF 4.4 1区 农林科学 Q1 AGRICULTURAL ENGINEERING Biosystems Engineering Pub Date : 2024-04-13 DOI:10.1016/j.biosystemseng.2024.03.010
Lu Zhang , Zunxu Liu , Yapeng Zheng , Bin Li
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Abstract

Accurately identifying the fish feeding intensity is crucial for timely understanding the feeding demand, dynamically adjusting the feeding strategy, and reducing costs. For the variability and uncontrollability of the pond aquaculture environment, the densities of feeding fish schools aggregating to the feeding point exhibit significant variations. Consequently, different densities of fish schools present inconsistent characteristics in the image, even under the same feeding intensity, making the precise identification of feeding intensity difficult. To tackle this issue, a method for identifying the feeding intensity of pond fish schools based on dual-label and MobileViT-SENet (DL-MobileViT-SENet) was proposed. The fish school images were marked with labels indicating density and feeding intensity to establish the dual-label dataset. Subsequently, a proposed MobileViT-SENet network is trained using the dataset to obtain the dual-label pre-training weight incorporating both fish density and feeding intensity features. Two models are trained to identify density and feeding intensity based on the obtained weight. Finally, a dynamic feeding strategy for fish that integrates biomass, density, and feeding intensity is presented. The proposed method combines the density and feeding intensity labels to enhance the accuracy of identifying the feeding intensity of pond fish schools across various densities, and lays the groundwork for designing a dynamic feeding strategy. It was tested on authentic pond fish school images and yielded an accuracy of 97.95%. This value is superior to these comparison methods, demonstrating that this method can accurately identify the feeding intensity of pond fish and provide support for formulating a dynamic feeding strategy.

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使用双标签和 MobileViT-SENet 的池塘鱼群摄食强度识别方法
准确识别鱼类的摄食强度对及时了解摄食需求、动态调整摄食策略和降低成本至关重要。由于池塘养殖环境的多变性和不可控性,聚集到投喂点的投喂鱼群密度表现出显著的差异。因此,即使在相同的投喂强度下,不同密度的鱼群在图像中也会呈现出不一致的特征,这就给精确识别投喂强度带来了困难。针对这一问题,提出了一种基于双标签和移动 ViT-SENet (DL-MobileViT-SENet)的池塘鱼群摄食强度识别方法。鱼群图像上标有表示密度和摄食强度的标签,以建立双标签数据集。随后,使用该数据集对拟议的 MobileViT-SENet 网络进行训练,以获得包含鱼群密度和摄食强度特征的双标签预训练权重。根据获得的权重,训练两个模型来识别密度和摄食强度。最后,提出了一种综合生物量、密度和摄食强度的鱼类动态摄食策略。所提出的方法结合了密度和摄食强度标签,提高了识别不同密度池塘鱼群摄食强度的准确性,为设计动态摄食策略奠定了基础。该方法在真实的池塘鱼群图像上进行了测试,准确率达到 97.95%。这一数值优于其他比较方法,表明该方法能准确识别池塘鱼群的摄食强度,为制定动态摄食策略提供支持。
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来源期刊
Biosystems Engineering
Biosystems Engineering 农林科学-农业工程
CiteScore
10.60
自引率
7.80%
发文量
239
审稿时长
53 days
期刊介绍: Biosystems Engineering publishes research in engineering and the physical sciences that represent advances in understanding or modelling of the performance of biological systems for sustainable developments in land use and the environment, agriculture and amenity, bioproduction processes and the food chain. The subject matter of the journal reflects the wide range and interdisciplinary nature of research in engineering for biological systems.
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