Estimating positions and paths of moving objects

K. Beard, H. Palancioglu
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引用次数: 7

Abstract

Several applications require support for representing and analyzing moving objects. Such applications include wildlife tracking, emergency dispatch, vehicle navigation, fleet management, storm tracking, and military applications to name a few. Enhanced data collection technologies such as high resolution satellite imagery, videogrammetry and GPS in combination with wireless communications are rapidly increasing the feasibility of obtaining information on moving objects and fueling new research and development. In these applications there is a need to efficiently answer questions about moving objects such as where they are at a specific time, where they have been in the past, where they will be in the future, and their relationships to static or other moving objects. Complete knowledge of object movements is not possible but movements can be predicted with some degree of reliability. Positions and paths of moving objects can be estimated from a set of observations. This paper reports on an approach that uses movement profiles, and movement histories in addition to observations to more reliably estimate positions and paths of moving objects.
估计移动物体的位置和路径
一些应用程序需要支持表示和分析移动对象。这些应用包括野生动物跟踪、紧急调度、车辆导航、车队管理、风暴跟踪和军事应用等。增强的数据收集技术,如高分辨率卫星图像、视频测量和GPS与无线通信相结合,正在迅速提高获取移动物体信息的可行性,并推动新的研究和发展。在这些应用中,需要有效地回答有关移动对象的问题,例如它们在特定时间的位置,它们过去的位置,它们将来的位置,以及它们与静态或其他移动对象的关系。完全了解物体的运动是不可能的,但运动可以在一定程度上可靠地预测。运动物体的位置和路径可以从一组观测中估计出来。本文报告了一种使用运动轮廓和运动历史的方法,除了观察之外,还可以更可靠地估计运动物体的位置和路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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