Artificial intelligence–based method for the rapid detection of fish parasites (Ichthyophthirius multifiliis, Gyrodactylus kobayashii, and Argulus japonicus)

IF 3.9 1区 农林科学 Q1 FISHERIES
Jiadong Li , Zirui Lian , Zhelin Wu , Lihua Zeng , Liangliang Mu , Ye Yuan , Hao Bai , Zheng Guo , Kangsen Mai , Xiao Tu , Jianmin Ye
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引用次数: 5

Abstract

Ichthyophthirius (Ichthyophthirius multifiliis), Monogenea (Gyrodactylus kobayashii) and fish lice (Argulus japonicus) are mainly infectious parasites, representative species of Protozoa, Platyhelminthes and Arthropoda, which cause serious economic losses in aquatic industry. In this research, a visual system that can rapidly detect and count these three kinds of parasites was realized based on a one-stage object detection deep learning algorithm YOLOv4 through python. Firstly, we made a dataset of parasites containing 27,930 images. Secondly, weights of the trained fish lice model were applied as the pre-training weights, and network (backbone indeed) frozen was also applied to obtaining a good performance predicting model with less time and higher accuracy, which showed that Transfer Learning could meet the training requirement for detecting these three fish parasites by using self-made data set. In addition, by comparison of different one-stage algorithms YOLOv4‑tiny, YOLOv3, et al., the best model with a total average accuracy (mAP) of 95.41% was achieved by the YOLOv4. Finally, this model could quickly detect and count mixed infected pictures with a speed of 0.13 s per image measured in GPU time. Further, a visual prediction and counting system equipped with the YOLOv4 was developed by using PyQt which is convenient for real-time video detection. A simple drug-giving system equipped with Praziquantel was also developed based on the thought of the Internet of Things in this study and after using a drug, the number of monogeneans infecting gold fish was reduced. At the same time, we modified YOLOv4 PANet by adding additional detection layers, which achieved greater performance of detecting smaller targets like Monogenea. Together, this Artificial intelligence–based method could realize the rapid detection and diagnosis of fish parasites in images and video.

基于人工智能的鱼类寄生虫(多filiis、Gyrodactylus kobayashi、Argulus japonicus)快速检测方法
鱼虱(Ichthyphothirius multifilis)、单基因虫(Gyrondactylus kobayashi)和鱼虱(Argulus japonicus)是主要的传染性寄生虫,是原生动物、扁形目和节肢动物的代表种,在水产工业中造成严重的经济损失。在本研究中,基于一阶段对象检测深度学习算法YOLOv4,通过python实现了一个可以快速检测和计数这三种寄生虫的视觉系统。首先,我们制作了一个寄生虫数据集,包含27930张图像。其次,将训练后的鱼虱模型的权值作为预训练权值,并应用网络(主干网)冻结,获得了一个时间短、精度高的性能良好的预测模型,表明利用自制的数据集,迁移学习可以满足检测这三种鱼类寄生虫的训练要求。此外,通过比较不同的一阶段算法YOLOv4‑tiny、YOLOv3等,YOLOv4获得了总平均准确率(mAP)为95.41%的最佳模型。最后,该模型可以快速检测和计数混合感染的图片,以GPU时间为单位,每张图片的速度为0.13s。此外,利用PyQt开发了一个配备YOLOv4的视觉预测和计数系统,该系统便于实时视频检测。本研究还基于物联网的思想开发了一种简单的配有吡喹酮的给药系统,使用该药物后,感染金鱼的单烯虫数量减少了。同时,我们通过添加额外的检测层对YOLOv4 PANet进行了改进,从而实现了检测Monogena等较小目标的更高性能。这种基于人工智能的方法可以在图像和视频中实现对鱼类寄生虫的快速检测和诊断。
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来源期刊
Aquaculture
Aquaculture 农林科学-海洋与淡水生物学
CiteScore
8.60
自引率
17.80%
发文量
1246
审稿时长
56 days
期刊介绍: Aquaculture is an international journal for the exploration, improvement and management of all freshwater and marine food resources. It publishes novel and innovative research of world-wide interest on farming of aquatic organisms, which includes finfish, mollusks, crustaceans and aquatic plants for human consumption. Research on ornamentals is not a focus of the Journal. Aquaculture only publishes papers with a clear relevance to improving aquaculture practices or a potential application.
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