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Water Quality Monitoring Method Based on TLD 3D Fish Tracking and XGBoost

机译:基于TLD 3D鱼追踪和XGBoost的水质监测方法

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Aiming at the problem of water quality monitoring, this paper presents a method of biological water quality monitoring based on TLD (Tracking-Learning-Detection) framework and XGBoost (eXtreme Gradient Boosting). Firstly, under the framework of TLD, an independent tracking system is designed; TLD captures 3D coordinate information of fish based on video and calculates the behavior of fish movement parameters which can reflect the change of water quality via processing the coordinate information of the fish body. The data of coordinate information will be more prominent via the data processing. The integration of all built XGBoost water quality monitoring model which is based on characteristic parameters; the model was used to analyze and evaluate fish behavior parameters under unknown water quality to achieve the purpose of water quality monitoring.
机译:针对水质监测的问题,提出了一种基于TLD(Tracking-Learning-Detection)框架和XGBoost(eXtreme Gradient Boosting)的生物水质监测方法。首先,在顶级域名(TLD)的框架下,设计了一个独立的跟踪系统; TLD基于视频捕获鱼的3D坐标信息,并通过处理鱼体的坐标信息来计算可以反映水质变化的鱼运动参数的行为。通过数据处理,坐标信息的数据将更加突出。基于特征参数的所有已建立的XGBoost水质监测模型的集成;利用该模型对未知水质下的鱼类行为参数进行分析和评价,以达到水质监测的目的。

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