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Analysing infrequently sampled animal tracking data by incorporating generalized movement trajectories with kernel density estimation

机译:通过将广义运动轨迹与核密度估计相结合来分析不经常采样的动物跟踪数据

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When analysing the movements of an animal, a common task is to generate a continuous probability density surface that characterises the spatial distribution of its locations, termed a home range. Traditional kernel density estimation (KDE), the Brownian Bridges kernel method, and time-geographic density estimation are all commonly used for this purpose, although their applicability in some practical situations is limited. Other studies have argued that KDE is inappropriate analysing moving objects, while the latter two methods are only suitable for tracking data collected at frequent enough intervals such that an object's movement pattern can be adequately represented using a space-time path created by connecting consecutive points. This research formulates and evaluates KDE using generalised movement trajectories approximated by Delaunay triangulation (KDE-DT) as a method for analysing infrequently sampled animal tracking data. In this approach, a DT is constructed from a point pattern of tracking data in order to approximate the network of movement trajectories for an animal. This network represents the generalised movement patterns of an animal rather than its specific, individual trajectories between locations. Then, kernel density estimates are calculated with distances measured using that network. First, this paper describes the method and then applies it to generate a probability density surface for a Florida panther from radio-tracking data collected three times per week. Second, the performance of the technique is evaluated in the context of delineating wildlife home ranges and core areas from simulated animal loca-tional data. The results of the simulations suggest that KDE-DT produces more accurate home range estimates than traditional KDE, which was evaluated with the same data in a previous study. In addition to animal home range analysis, the technique may be useful for characterising a variety of spatial point patterns generated by objects that move through continuous space, such as pedestrians or ships.
机译:在分析动物的运动时,一项常见的任务是生成一个连续的概率密度表面,该表面表征其位置的空间分布,称为本垒。传统的核密度估计(KDE),布朗桥核方法和时间地理密度估计都普遍用于此目的,尽管它们在某些实际情况下的适用性受到限制。其他研究认为,KDE不适合分析运动对象,而后两种方法仅适合于以足够频繁的间隔跟踪收集的数据,从而可以使用通过连接连续点而创建的时空路径来充分表示对象的运动模式。本研究使用Delaunay三角剖分(KDE-DT)近似的广义运动轨迹作为分析不经常采样的动物跟踪数据的方法来制定和评估KDE。在这种方法中,根据跟踪数据的点模式构造DT,以便近似动物的运动轨迹网络。该网络表示动物的一般运动模式,而不是位置之间特定的个体轨迹。然后,利用使用该网络测得的距离来计算内核密度估计。首先,本文介绍了该方法,然后将其应用于根据每周收集三次的无线电跟踪数据为佛罗里达豹生成概率密度表面。其次,在从模拟动物位置数据划定野生生物栖息地范围和核心区域的背景下,评估了该技术的性能。仿真结果表明,与传统KDE相比,KDE-DT可以提供更准确的本地范围估计值,后者在先前的研究中使用相同的数据进行了评估。除了进行动物居所范围分析之外,该技术还可用于表征由在连续空间中移动的物体(如行人或轮船)生成的各种空间点模式。

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