Predicting coordinated group movements of sharks with limited observations using AUVs

Cherie Ho, Kimberly Joly, A. Nosal, C. Lowe, C. Clark
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引用次数: 2

Abstract

This paper presents a method for modeling and then tracking the 2D planar size, location, orientation, and number of individuals of an animal aggregation using Autonomous Underwater Vehicles (AUVs). It is assumed that the AUVs are equipped with sensors that can measure the position states of a subset of individuals from within the aggregation being tracked. A new aggregation model based on provably stable Markov Process Matrices is shown as a viable model for representing aggregations. Then, a multi-stage state estimation architecture based on Particle Filters is presented that can estimate the time-varying model parameters in real-time using sensor measurements obtained by AUVs. To validate the approach, a historical data set is used consisting of >100 shark trajectories from a leopard shark aggregation observed in the La Jolla, CA coast area. The method is generalizable to any stable group movement model constructed using a Markov Matrix. Simulation results show that, when at least 40+ of sharks are tagged, the estimated number of sharks in the aggregation has an error of 6+. This error increased to 27+ when the system was tested with real data.
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利用水下航行器在有限的观察下预测鲨鱼的协调群体运动
本文提出了一种利用自主水下航行器(auv)对动物群体的二维平面尺寸、位置、方向和个体数量进行建模和跟踪的方法。假设auv配备了传感器,可以从被跟踪的集合中测量个体子集的位置状态。提出了一种基于可证明稳定马尔可夫过程矩阵的聚合模型。然后,提出了一种基于粒子滤波的多阶段状态估计体系结构,该体系可以利用水下机器人获得的传感器测量数据实时估计时变模型参数。为了验证该方法,使用了一组历史数据集,其中包括在加利福尼亚州拉霍亚沿海地区观察到的豹鲨聚集的超过100条鲨鱼轨迹。该方法可推广到任何用马尔可夫矩阵构造的稳定群体运动模型。仿真结果表明,当至少有40+条鲨鱼被标记时,聚合中估计的鲨鱼数量误差为6+。当用实际数据对系统进行测试时,该误差增加到27+。
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