Location-Based Aggregate Queries for Heterogeneous Neighboring Objects

Currently, most of the processing techniques for the conventional location-based queries focus only on a single type of objects. However, in real-life applications, the user may be interested in obtaining information about different types of objects, in terms of their neighboring relationship. We te...

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Main Author: Yuan-Ko Huang
Format: Article
Language:English
Published: IEEE 2017-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/7888509/
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spelling doaj-3a77850febfd4071b707eed60af592442021-03-29T20:10:09ZengIEEEIEEE Access2169-35362017-01-0154887489910.1109/ACCESS.2017.26884727888509Location-Based Aggregate Queries for Heterogeneous Neighboring ObjectsYuan-Ko Huang0https://orcid.org/0000-0002-6061-3285Department of Maritime Information and Technology, National Kaohsiung Marine University, Kaohsiung, TaiwanCurrently, most of the processing techniques for the conventional location-based queries focus only on a single type of objects. However, in real-life applications, the user may be interested in obtaining information about different types of objects, in terms of their neighboring relationship. We term the different types of stationary objects closer to each other the heterogeneous neighboring objects (HNOs). Efficient processing of the location-based queries on the HNOs is more complicated than that on a single data source, because the neighboring relationship between the HNOs inevitably affects the query result. In this paper, we present useful and important location-based aggregate queries on the HNOs, which can provide useful object information by considering both the spatial closeness of objects to the query object and the neighboring relationship between objects. The location-based aggregate queries consist of four queries: the shortest average-distance (SAvgD) query, the shortest minimal-distance (SMinD) query, the shortest maximal-distance (SMaxD) query, and the shortest sum-distance (SSumD) query. To process the location-based aggregate queries, we devise two heuristics, the HNOs-qualifying heuristic and the HNOs-pruning heuristic, to efficiently determine the HNOs sets. According to different query types, we further propose four heuristics, the SAvgD-pruning heuristic, the SMinD-pruning heuristic, the SMaxD-pruning heuristic, and the SSumD-pruning heuristic, to effectively reduce the number of distance computations required for query processing. Comprehensive experiments are conducted to demonstrate the effectiveness of the heuristics and the efficiency of the proposed approaches.https://ieeexplore.ieee.org/document/7888509/Location-based queriesheterogeneous neighboring objectslocation-based aggregate queriesspatial closenessneighboring relationship
collection DOAJ
language English
format Article
sources DOAJ
author Yuan-Ko Huang
spellingShingle Yuan-Ko Huang
Location-Based Aggregate Queries for Heterogeneous Neighboring Objects
IEEE Access
Location-based queries
heterogeneous neighboring objects
location-based aggregate queries
spatial closeness
neighboring relationship
author_facet Yuan-Ko Huang
author_sort Yuan-Ko Huang
title Location-Based Aggregate Queries for Heterogeneous Neighboring Objects
title_short Location-Based Aggregate Queries for Heterogeneous Neighboring Objects
title_full Location-Based Aggregate Queries for Heterogeneous Neighboring Objects
title_fullStr Location-Based Aggregate Queries for Heterogeneous Neighboring Objects
title_full_unstemmed Location-Based Aggregate Queries for Heterogeneous Neighboring Objects
title_sort location-based aggregate queries for heterogeneous neighboring objects
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2017-01-01
description Currently, most of the processing techniques for the conventional location-based queries focus only on a single type of objects. However, in real-life applications, the user may be interested in obtaining information about different types of objects, in terms of their neighboring relationship. We term the different types of stationary objects closer to each other the heterogeneous neighboring objects (HNOs). Efficient processing of the location-based queries on the HNOs is more complicated than that on a single data source, because the neighboring relationship between the HNOs inevitably affects the query result. In this paper, we present useful and important location-based aggregate queries on the HNOs, which can provide useful object information by considering both the spatial closeness of objects to the query object and the neighboring relationship between objects. The location-based aggregate queries consist of four queries: the shortest average-distance (SAvgD) query, the shortest minimal-distance (SMinD) query, the shortest maximal-distance (SMaxD) query, and the shortest sum-distance (SSumD) query. To process the location-based aggregate queries, we devise two heuristics, the HNOs-qualifying heuristic and the HNOs-pruning heuristic, to efficiently determine the HNOs sets. According to different query types, we further propose four heuristics, the SAvgD-pruning heuristic, the SMinD-pruning heuristic, the SMaxD-pruning heuristic, and the SSumD-pruning heuristic, to effectively reduce the number of distance computations required for query processing. Comprehensive experiments are conducted to demonstrate the effectiveness of the heuristics and the efficiency of the proposed approaches.
topic Location-based queries
heterogeneous neighboring objects
location-based aggregate queries
spatial closeness
neighboring relationship
url https://ieeexplore.ieee.org/document/7888509/
work_keys_str_mv AT yuankohuang locationbasedaggregatequeriesforheterogeneousneighboringobjects
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