Continuous Possible K-Nearest Skyline Query in Euclidean Spaces

Yuan-Ko Huang, Zong-Han He, Chiang Lee, Wu-Hsiu Kuo
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引用次数: 2

Abstract

Continuous K-nearest skyline query (CKNSQ) is an important type of the spatio-temporal queries. Given a query time interval [ts, te] and a moving query object q, a CKNSQ is to retrieve the K-nearest skyline points of q at each time instant within [ts, te]. Different from the previous works, our work devotes to overcoming the past assumption that each object is static with certain dimensional values and located in road networks. In this paper, we focus on processing the CKNSQ over moving objects with uncertain dimensional values in Euclidean space and the velocity of each object (including the query object) varies within a known range. Such a query is called the continuous possible K-nearest skyline query (CPKNSQ). We first discuss the difficulties raised by the uncertainty of object and then propose the CPKNSQ algorithm operated with a data partitioning index, called the uncertain TPR-tree (UTPR-tree), to efficiently answer the CPKNSQ.
欧几里德空间中连续可能的k -最近Skyline查询
连续k最近天际线查询(CKNSQ)是一种重要的时空查询类型。给定一个查询时间间隔[ts, te]和一个移动的查询对象q, CKNSQ是在[ts, te]内的每个时间瞬间检索q最近的k个天际线点。与之前的作品不同,我们的作品致力于克服过去的假设,即每个物体都是静态的,具有一定的尺寸值,并且位于道路网络中。本文主要研究欧几里得空间中具有不确定维度值的运动对象,且每个对象(包括查询对象)的速度在已知范围内变化时的CKNSQ处理。这样的查询称为连续可能k -最近天际线查询(CPKNSQ)。我们首先讨论了目标不确定性带来的困难,然后提出了一种基于数据分区索引的CPKNSQ算法,称为不确定tpr树(utpr树),以有效地解决CPKNSQ问题。
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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