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Evaluation of fish feeding intensity in aquaculture using a convolutional neural network and machine vision

机译:利用卷积神经网络和机器视觉评估水产养殖中鱼类饲养强度的评价

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摘要

In aquaculture, information on fish appetite is of great significance for guiding feeding and production practices. However, most fish appetite assessment methods are inefficient and subjective. To solve these problems, in this study, an automatic method for grading fish feeding intensity based on a convolutional neural network (CNN) and machine vision is proposed to evaluate fish appetite. The specific implementation process was as follows. First, images were collected during the feeding process, and a dataset was constructed and extended using rotation, scale, and translation (RST) augmentation techniques and noise-invariant data expansion. Then, a CNN was trained on the training dataset, and the fish appetite levels were graded using the trained CNN model. Finally, the performance of the method was evaluated and compared with other quantitative and qualitative feeding intensity assessment methods. The results show that the grading accuracy reached 90%; thus, the model can be used to detect and evaluate fish appetite to guide production practices.
机译:在水产养殖中,有关鱼类食欲的信息对于引导饲养和生产实践具有重要意义。然而,大多数鱼类食欲评估方法效率低,主观。为了解决这些问题,在本研究中,提出了一种基于卷积神经网络(CNN)和机器视觉进行鱼类喂养强度的自动方法,以评估鱼食欲。具体实施过程如下。首先,在馈送过程中收集图像,使用旋转,刻度和翻译(RST)增强技术和噪声不变数据扩展来构建和扩展数据集。然后,在训练数据集上培训CNN,使用训练的CNN模型进行了鱼类食欲水平。最后,评估该方法的性能并与其他定量和定性饲养强度评估方法进行比较。结果表明,分级精度达到90%;因此,该模型可用于检测和评估鱼类胃口以指导生产实践。

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