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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Characterization of fish schooling behavior with different numbers of Medaka (Oryzias latipes) and goldfish (Carassius auratus) using a Hidden Markov Model
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Characterization of fish schooling behavior with different numbers of Medaka (Oryzias latipes) and goldfish (Carassius auratus) using a Hidden Markov Model

机译:使用隐马尔可夫模型表征不同数量的Medaka(Oryzias latipes)和金鱼(Carassius auratus)的鱼类放养行为

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Fish that swim in schools benefit from increased vigilance, and improved predator recognition and assessment. Fish school size varies according to species and environmental conditions. In this study, we present a Hidden Markov Model (HMM) that we use to characterize fish schooling behavior in different sized schools, and explore how school size affects schooling behavior. We recorded the schooling behavior of Medaka (Oryzias latipes) and goldfish (Carassius auratus) using different numbers of individual fish (10-40), in a circular aquarium. Eight to ten 3 s video clips were extracted from the recordings for each group size. Schooling behavior was characterized by three variables: linear speed, angular speed, and Pearson coefficient. The values of the variables were categorized into two events each for linear and angular speed (high and low), and three events for the Pearson coefficient (high, medium, and low). Schooling behavior was then described as a sequence of 12 events (2×2×3), which was input to an HMM as data for training the model. Comparisons of model output with observations of actual schooling behavior demonstrated that the HMM was successful in characterizing fish schooling behavior. We briefly discuss possible applications of the HMM for recognition of fish species in a school, and for developing bio-monitoring systems to determine water quality.
机译:在学校里游泳的鱼可以提高警惕,并改善捕食者的识别和评估能力。鱼群的大小根据物种和环境条件而变化。在这项研究中,我们提出了一种隐马尔可夫模型(HMM),用于表征不同规模学校的鱼类学习行为,并探讨学校规模如何影响学习行为。我们在圆形水族馆中记录了使用不同数量的单鱼(10-40条)记录了Medaka(Oryzias latipes)和金鱼(Carassius auratus)的学习行为。对于每个小组规模,从记录中提取出八到十个3 s视频剪辑。教育行为的特征在于三个变量:线速度,角速度和皮尔森系数。变量的值分为线性和角速度两个事件(高和低),皮尔逊系数三个事件(高,中和低)。然后将学校教育行为描述为12个事件(2×2×3)的序列,将其输入到HMM作为训练模型的数据。将模型输出与实际放学行为的观察结果进行比较表明,HMM成功地表征了鱼类的放学行为。我们简要讨论了HMM在学校中识别鱼类和开发生物监测系统以确定水质的可能应用。

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