计算机视觉检测养殖大西洋鲑鱼(Salmo salar)的总鳃评分和通气率之间的关系。

IF 2.2 3区 农林科学 Q2 FISHERIES
Quynh Le Khanh Vo, Kylie A Pitt, Colin Johnston, Blair Kennedy, Lukas Folkman
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引用次数: 0

摘要

鳃健康状况不佳会导致呼吸窘迫和换气频率增加,从而损害养殖大西洋鲑鱼(Salmo salar)的健康和福利。鳃健康状况不佳是由多种因素造成的,包括阿米巴鳃病(AGD)、水母蜇伤和有毒藻类,养鱼户通过人工“鳃评分”来监测。鳃评分包括目视检查鳃表面的可见病变,如白色粘液斑块。在商业鲑鱼养殖中,这些斑块通常与AGD有关,这是导致鳃健康状况不佳的主要原因。对鱼类来说,人工监测鳃是一项劳动密集型的工作,成本高昂,而且压力很大。本研究测试了一种非侵入性计算机视觉方法,以检测商业养殖场中总鳃评分和鱼类通气率之间的关系。我们假设养殖大西洋鲑鱼通气率的增加与较高的总鳃评分有关。计算机视觉模型首先检测鱼头,并使用卷积神经网络对它们的嘴巴状态(张开或闭上)进行分类,然后使用检测跟踪方法通过计算鱼张开和闭上嘴巴的频率来估计通风率。通过在塔斯马尼亚鲑鱼养殖场录制的240个视频估计了通风率,并与鳃总评分、水温、溶解氧和鱼的重量一起进行了分析。多元线性回归分析显示通气率与总鳃评分呈正相关,尽管观察到通气率的变化相对较小。由于本研究中实验室诊断方法未证实AGD,因此鳃总评分应主要被解释为鳃健康状况的指标,承认它们也可能反映与AGD一致的体征。虽然经过测试的计算机视觉方法不能作为诊断工具,但它可以帮助工业界确定需要进一步检查的健康和福利问题。这种方法提供了一种非侵入性的方式来监督健康和福利,增强管理实践,并指导手动健康评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer Vision Detects an Association Between Gross Gill Score and Ventilation Rates in Farmed Atlantic Salmon (Salmo salar).

Poor gill health compromises the health and welfare of farmed Atlantic salmon (Salmo salar) by causing respiratory distress and increased ventilation frequency. Poor gill health is caused by numerous factors, including amoebic gill disease (AGD), jellyfish stings, and toxic algae, and is monitored by fish farmers by manual 'gill scoring'. Gill scoring involves visual inspection of gill surfaces for visible lesions, such as white mucoid patches. In commercial salmon farming, these patches are commonly associated with AGD, a major cause of poor gill health. Manual monitoring of gills is labour-intensive, costly, and stressful for fish. This study tested a non-invasive computer vision approach to detect the association between the gross gill score and fish ventilation rates in commercial farms. We hypothesised that increased ventilation rates of farmed Atlantic salmon were associated with a higher gross gill score. The computer vision model first detected fish heads and classified their mouth states (open or closed) using a convolutional neural network, followed by a tracking-by-detection method to estimate ventilation rates by calculating the frequency with which fish opened and closed their mouths. Ventilation rates were estimated from 240 videos recorded at Tasmanian salmon farms and analysed alongside gross gill score, water temperature, dissolved oxygen, and fish weight. Multiple linear regression analysis revealed a positive association between ventilation rates and gross gill score, although the observed change in ventilation rates was relatively small. As laboratory diagnostic methods did not confirm AGD in this study, the gross gill scores should be interpreted primarily as indicators of gill health, acknowledging that they may also reflect signs consistent with AGD. While the tested computer vision method cannot serve as a diagnostic tool, it may assist the industry in identifying health and welfare issues that require further examination. This approach provides a non-invasive way to oversee health and welfare, enhances management practices, and guides manual health assessments.

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来源期刊
Journal of fish diseases
Journal of fish diseases 农林科学-海洋与淡水生物学
CiteScore
4.60
自引率
12.00%
发文量
170
审稿时长
6 months
期刊介绍: Journal of Fish Diseases enjoys an international reputation as the medium for the exchange of information on original research into all aspects of disease in both wild and cultured fish and shellfish. Areas of interest regularly covered by the journal include: -host-pathogen relationships- studies of fish pathogens- pathophysiology- diagnostic methods- therapy- epidemiology- descriptions of new diseases
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