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Automatically Detect and Track Multiple Fish Swimming in Shallow Water with Frequent Occlusion

机译:自动检测和跟踪经常堵塞的浅水中多条鱼游动

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摘要

Due to its universality, swarm behavior in nature attracts much attention of scientists from many fields. Fish schools are examples of biological communities that demonstrate swarm behavior. The detection and tracking of fish in a school are of important significance for the quantitative research on swarm behavior. However, different from other biological communities, there are three problems in the detection and tracking of fish school, that is, variable appearances, complex motion and frequent occlusion. To solve these problems, we propose an effective method of fish detection and tracking. In this method, first, the fish head region is positioned through extremum detection and ellipse fitting; second, The Kalman filtering and feature matching are used to track the target in complex motion; finally, according to the feature information obtained by the detection and tracking, the tracking problems caused by frequent occlusion are processed through trajectory linking. We apply this method to track swimming fish school of different densities. The experimental results show that the proposed method is both accurate and reliable.
机译:由于其普遍性,自然界中的群体行为吸引了许多领域的科学家的广泛关注。鱼群是表现出群体行为的生物群落的例子。对学校鱼类的检测和跟踪对于群体行为的定量研究具有重要意义。但是,与其他生物群落不同,鱼群的检测和跟踪存在三个问题,即外观变化,运动复杂和频繁闭塞。为了解决这些问题,我们提出了一种有效的鱼类检测和跟踪方法。在这种方法中,首先,通过极值检测和椭圆拟合来定位鱼头区域;然后其次,卡尔曼滤波和特征匹配用于跟踪复杂运动中的目标。最后,根据检测跟踪得到的特征信息,通过轨迹链接处理频繁遮挡引起的跟踪问题。我们将这种方法应用于跟踪不同密度的游泳鱼群。实验结果表明,该方法准确,可靠。

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