Behavioural Pattern Analysis of Fishes for Smart Aquaculture: An Object Centric Approach

Shreesha Surathkal, M. ManoharaPaiM., Ujjwal Verma, R. Pai, S. Girisha
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引用次数: 1

Abstract

Fish farmers are looking for sustainable methods of fishing to meet the ever-increasing demand for quality aquatic products. However, the water quality parameters, such as temperature, Dissolved Oxygen (DO) and pH plays a significant role in the success of aquaculture. The Dissolved oxygen concentration in the fish farms has a greater influence on the outcome of the aquaculture. DO can vary drastically depending upon many external factors, such as feeding, stocking density, diseases etc. Sudden depletion in DO can result in mass mortality of fishes if the preventive actions are not prompt. To this end, computer vision-based behaviour detection plays a significant role. The present study proposes to develop a novel computer vision-based approach to detect swimming at the surface pattern. An experiment is a setup to capture and develop the dataset of fish movement patterns. The proposed method uses detections alone to identify the swimming at the surface pattern. These detections are clustered and the mean of the clusters are compared against the threshold for classifying the pattern as Swimming at the surface pattern. The threshold is identified using the position histogram from the dataset. The proposed method is efficient, lightweight and reliable making it suitable for deployment in smart systems. The proposed method is also compared with pattern detection using a tracking algorithm. The results highlight the reliability of the proposed method to detect the patterns in aquaculture.
智能水产养殖鱼类行为模式分析:以对象为中心的方法
养鱼户正在寻找可持续的捕鱼方法,以满足对优质水产品日益增长的需求。然而,水温、溶解氧(DO)和pH等水质参数对水产养殖的成功与否起着重要作用。养殖场溶解氧浓度对养殖效果的影响较大。DO的变化取决于许多外部因素,如饲养、饲养密度、疾病等。如果不及时采取预防措施,DO的突然枯竭可能导致鱼类大量死亡。为此,基于计算机视觉的行为检测起着重要的作用。本研究提出了一种新的基于计算机视觉的水面游泳模式检测方法。实验是捕获和开发鱼类运动模式数据集的一种设置。所提出的方法仅使用检测来识别水面上的游动模式。将这些检测聚类,并将聚类的平均值与将模式分类为在水面游泳模式的阈值进行比较。阈值使用来自数据集的位置直方图来识别。该方法高效、轻便、可靠,适合在智能系统中部署。并将该方法与基于跟踪算法的模式检测进行了比较。结果表明了该方法在水产养殖中检测模式的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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