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Visual Analysis of Fish Feeding Intensity for Smart Feeding in Aquaculture Using Deep Learning

机译:基于深度学习的水产养殖智能饲喂鱼类摄食强度的可视化分析

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This paper presents a novel deep-learning approach to analyze the fish feeding intensity based on the images of fish tanks during the fish feeding process. The grade of the fish feeding intensity is an important indicator of fish appetite. On the design of a smart feeding system in aquaculture, this information is of great significance for guiding feeding and optimizing the fish production. However, conventional fish appetite assessment methods are inefficient and subjective. To solve these problems, in this study, based on a space-time two-stream 3D CNN. a deep learning approach for grading fish feeding intensity is proposed to evaluate fish appetite. The flow of the approach is implemented as follows. First, a fixed RGB camera is setup to capture the videos from the fish tanks during the feeding processes. This also constructs a dataset for training the two-stream neural network, and the fish appetite levels are graded using the trained neural network model. Finally, the performance of the method is evaluated and compared with other CNN-based deep learning approaches. The results show that the grading accuracy reached 91.18%, which outperforms the compared CNN-based approaches. Thus, the model can be used to detect and evaluate fish appetite to guide production practices.
机译:本文提出了一种新颖的深度学习方法,可以基于喂鱼过程中鱼缸的图像来分析喂鱼强度。鱼的摄食强度等级是鱼食欲的重要指标。在设计水产养殖智能饲喂系统时,此信息对于指导饲喂和优化鱼类产量具有重要意义。然而,常规的鱼类食欲评估方法效率低下且主观。为了解决这些问题,在本研究中,基于时空两流3D CNN。提出了一种对鱼类摄食强度进行分级的深度学习方法,以评估鱼类的食欲。该方法的流程实现如下。首先,设置一个固定的RGB摄像机以在喂食过程中捕获鱼缸中的视频。这也构建了用于训练两流神经网络的数据集,并且使用训练的神经网络模型对鱼的食欲水平进行了分级。最后,对该方法的性能进行了评估,并与其他基于CNN的深度学习方法进行了比较。结果表明,该方法的分级精度达到91.18%,优于基于CNN的方法。因此,该模型可用于检测和评估鱼类的食欲,以指导生产实践。

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