Feeding intensity assessment of aquaculture fish using Mel Spectrogram and deep learning algorithms

IF 3.6 2区 农林科学 Q2 AGRICULTURAL ENGINEERING
Zhuangzhuang Du , Meng Cui , Qi Wang , Xiaohang Liu , Xianbao Xu , Zhuangzhuang Bai , Chuanyu Sun , Bingxiong Wang , Shuaixing Wang , Daoliang Li
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引用次数: 2

Abstract

Accurately and objectively analyzing fish feeding intensity is essential to guiding feeding and production techniques. Fish feeding intensity in recirculating aquaculture systems (RAS) can be used to indicate a fish's appetite. However, the low efficiency and lack of objectivity of manual observation are problems with current fish feeding intensity assessment processes. Applying acoustic techniques to aquaculture issues is an insufficiently explored area that requires new investigations, particularly into methods that explore temporal information in acoustic spectrograms. With Oplegnathus punctatus as the experimental species, we proposed a fish feeding intensity detection method based on the Mel Spectrogram and MobileNetV3-SBSC lightweight networks. First, the Oplegnathus punctatus feeding sound dataset, which has a total of 3 types—"strong," "medium," and "none," was built. Next, Mel Spectrogram feature maps were extracted using steps including preprocessing, Fast Fourier Transform (FFT), Mel filter bank (MFB), etc. Finally, the MobileNetV3-SBSC lightweight network was used to detect and recognize the obtained feature maps. Experimental results indicated that the proposed MobileNetV3-SBSC model, as compared to the MobileNetV3-S model, improved test accuracy by 4.6% and decreased test loss by 67.4% with only a 0.84% increase in the number of parameters and a 3.08% increase in the model size. Additionally, we have verified that the accuracy of the test set was 59.6%, 53.3%, 83.3%, 85.3%, and 85.9% for groups of 5, 15, 40, 70, and 100 fish, respectively. This study demonstrated that the proposed method is not applicable to a small number of fish, which means that when the numbers of fish are small, changes in the feeding of individual fish would have a significant effect on the whole feeding feature map, leading to negligible changes in feeding features. However, in view of the commonly high aquaculture density, the proposed method can be used to automatically and objectively examine fish feeding, which could provide a theoretical basis and methodological support for further feeding decisions.

基于Mel谱图和深度学习算法的水产养殖鱼类摄食强度评估
准确、客观地分析鱼类的饲养强度对指导饲养和生产技术至关重要。循环水产养殖系统(RAS)中的鱼类进食强度可用于指示鱼类的食欲。然而,人工观察的效率低和缺乏客观性是当前鱼类饲养强度评估过程的问题。将声学技术应用于水产养殖问题是一个探索不足的领域,需要进行新的研究,特别是对探索声谱图中时间信息的方法。以点状Oplegnathus punctatus为实验物种,提出了一种基于Mel Spectrogram和MobileNetV3 SBSC轻量级网络的鱼类摄食强度检测方法。首先,建立了点状Oplegnathus punctatus进食声音数据集,该数据集共有3种类型——“强”、“中等”和“无”。接下来,使用预处理、快速傅立叶变换(FFT)、梅尔滤波器组(MFB)等步骤提取梅尔谱图特征图。最后,使用MobileNetV3 SBSC轻量级网络对获得的特征图进行检测和识别。实验结果表明,与MobileNetV3-S模型相比,所提出的MobileNetV3 SBSC模型的测试精度提高了4.6%,测试损失减少了67.4%,参数数量仅增加了0.84%,模型大小仅增加了3.08%。此外,我们已经验证,对于5、15、40、70和100条鱼的组,测试集的准确性分别为59.6%、53.3%、83.3%、85.3%和85.9%。这项研究表明,所提出的方法不适用于少量鱼类,这意味着当鱼类数量较少时,个体鱼类的进食变化会对整个进食特征图产生显著影响,导致进食特征的变化可以忽略不计。然而,鉴于水产养殖密度普遍较高,该方法可用于自动、客观地检查鱼类饲养情况,为进一步的饲养决策提供理论依据和方法支持。
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来源期刊
Aquacultural Engineering
Aquacultural Engineering 农林科学-农业工程
CiteScore
8.60
自引率
10.00%
发文量
63
审稿时长
>24 weeks
期刊介绍: Aquacultural Engineering is concerned with the design and development of effective aquacultural systems for marine and freshwater facilities. The journal aims to apply the knowledge gained from basic research which potentially can be translated into commercial operations. Problems of scale-up and application of research data involve many parameters, both physical and biological, making it difficult to anticipate the interaction between the unit processes and the cultured animals. Aquacultural Engineering aims to develop this bioengineering interface for aquaculture and welcomes contributions in the following areas: – Engineering and design of aquaculture facilities – Engineering-based research studies – Construction experience and techniques – In-service experience, commissioning, operation – Materials selection and their uses – Quantification of biological data and constraints
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