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Nonintrusive and automatic quantitative analysis methods for fish behaviour in aquaculture

机译:水产养殖中鱼类行为的非侵入式自动定量分析方法

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Abstract In aquaculture, accurate and automatic quantification of fish behaviour can provide useful data input for production management and decision‐making. In recent years, with the focus on fish welfare, it has become urgent to study and use nondestructive quantitative methods of fish behaviour in aquaculture. In this paper, based on the literature of the past 30 years, nonintrusive and automatic quantitative methods for fish behaviour are analysed. Firstly, several important fish behaviours in aquaculture are listed, and the quantification of fish behaviour is summarized in four stages: detection, tracking, feature extraction and behaviour recognition. Then, nonintrusive methods of fish behaviour quantification, through machine vision, acoustics and sensors, and their advantages and disadvantages are also compared and discussed in detail. It is concluded that the combination of multiple methods and deep learning is a key technology for fish behaviour quantification, which has gradually become a popular focus of research and application in recent years. This review can be used as a reference to improve fish behaviour quantification in future, so as to create a more effective and economic technical method.
机译:摘要 在水产养殖中,准确、自动量化鱼类行为可为生产管理和决策提供有用的数据输入。近年来,随着对鱼类福利的关注,在水产养殖中研究和使用鱼类行为的无损定量方法变得迫在眉睫。本文基于过去30年的文献,分析了鱼类行为的非侵入性和自动定量方法。首先,列举了水产养殖中几种重要的鱼类行为,并将鱼类行为的量化总结为检测、跟踪、特征提取和行为识别四个阶段。然后,通过机器视觉、声学和传感器对鱼类行为进行非侵入性量化的方法及其优缺点进行了比较和详细讨论。综上所述,多方法与深度学习相结合是鱼类行为量化的关键技术,近年来逐渐成为研究和应用的热点。该综述可作为未来改进鱼类行为量化的参考,从而创造一种更有效、更经济的技术方法。

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