4.5 Article

Recent advances in intelligent recognition methods for fish stress behavior

Journal

AQUACULTURAL ENGINEERING
Volume 96, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.aquaeng.2021.102222

Keywords

Fish behavior; Stress response; Computer vision; Sensors; Acoustic technology

Funding

  1. National Key RD Program [2019JZZY010703]
  2. National Key Research and Development Program of China: Sino-Malta Fund 2019 Research and Demonstration of Real-time Accurate Monitoring System for Early-stage Fish in Recirculating Aquaculture System [2019YFE0103700]
  3. Sino-British Cooperation Project Research and Intelligent Equipment for New Generation Aquaculture [2017YFE0122100-1]

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The acquisition of fish stress information is crucial for monitoring water quality, preventing diseases, and improving welfare. Traditional manual methods for monitoring fish stress are time-consuming and unreliable, while new intelligent methods provide opportunities for automatic recognition. The latest technologies are categorized into machine vision-based, sensor-based, and acoustic-based methods. Advanced sensors and machine learning techniques play a key role in accelerating the automation and intelligence of fish welfare monitoring technology.
The acquisition of information on fish stress has been recognized as an urgent need for monitoring water quality, preventing disease, and improving welfare. Minimizing the potential stress-related impact on fish health has attracted public attention by effectively and reliably identifying early signs of stress response in intensive aquaculture. To date, fish stress has been mainly monitored, identified, and evaluated manually, which is timeconsuming, laborious, insufficient, and unreliable. Recently, intelligent methods and equipment create new opportunities for the automatic recognition of abnormal states involving behavioral and physiological stress responses of fish. This study reviewed the relevant articles on fish stress monitoring and summarized that the novel technologies were sorted into three categories: machine vision-based, sensor-based, and acoustic-based methods. All methods were assessed for their applications, advantages, and disadvantages, respectively. It is concluded that advanced sensors and machine learning-based methods are essential for accelerating the automation and intelligence of fish welfare monitoring technology. This paper proposes that the information fusion and deep learning algorithms have the potential to further improve the accuracy of future research on abnormal behavior recognition in smart fish farming.

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