REGION OF INTEREST MINING USING STAY POINT DETECTION AND POINT REGION QUADTREE

Regions of Interest (RoI) mining using Point Region (PR) quadtree on continuous movement data introduces problems as spatial partitioning process as well as RoI extraction process become computationaly high. To handle this problem, this research proposes a method to adopt the use of stay point detec...

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Main Author: Zilvan, Vicky
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/31473
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:31473
spelling id-itb.:314732018-10-05T13:22:03ZREGION OF INTEREST MINING USING STAY POINT DETECTION AND POINT REGION QUADTREE Zilvan, Vicky Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/31473 Regions of Interest (RoI) mining using Point Region (PR) quadtree on continuous movement data introduces problems as spatial partitioning process as well as RoI extraction process become computationaly high. To handle this problem, this research proposes a method to adopt the use of stay point detection on PR quadtree for RoI mining. This research also proposes to use both the spatial and temporal aspects of the data in order to provide spatial and temporal based RoI. <br /> <br /> <br /> The evaluation of the proposed method shows that the adoption of stay point detection on PR quadtree for RoI mining reduces the computational time on spatial partitioning process and RoI extraction process. The proposed method also solves the problem in obtaining more precise RoI mining results. The evaluation also shows that the method can be used to produce more detailed RoI’s that are based on both spatial dan temporal aspects of the data. Using this approach, we can see different regions of interest depending on the times of consideration. <br /> text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Regions of Interest (RoI) mining using Point Region (PR) quadtree on continuous movement data introduces problems as spatial partitioning process as well as RoI extraction process become computationaly high. To handle this problem, this research proposes a method to adopt the use of stay point detection on PR quadtree for RoI mining. This research also proposes to use both the spatial and temporal aspects of the data in order to provide spatial and temporal based RoI. <br /> <br /> <br /> The evaluation of the proposed method shows that the adoption of stay point detection on PR quadtree for RoI mining reduces the computational time on spatial partitioning process and RoI extraction process. The proposed method also solves the problem in obtaining more precise RoI mining results. The evaluation also shows that the method can be used to produce more detailed RoI’s that are based on both spatial dan temporal aspects of the data. Using this approach, we can see different regions of interest depending on the times of consideration. <br />
format Theses
author Zilvan, Vicky
spellingShingle Zilvan, Vicky
REGION OF INTEREST MINING USING STAY POINT DETECTION AND POINT REGION QUADTREE
author_facet Zilvan, Vicky
author_sort Zilvan, Vicky
title REGION OF INTEREST MINING USING STAY POINT DETECTION AND POINT REGION QUADTREE
title_short REGION OF INTEREST MINING USING STAY POINT DETECTION AND POINT REGION QUADTREE
title_full REGION OF INTEREST MINING USING STAY POINT DETECTION AND POINT REGION QUADTREE
title_fullStr REGION OF INTEREST MINING USING STAY POINT DETECTION AND POINT REGION QUADTREE
title_full_unstemmed REGION OF INTEREST MINING USING STAY POINT DETECTION AND POINT REGION QUADTREE
title_sort region of interest mining using stay point detection and point region quadtree
url https://digilib.itb.ac.id/gdl/view/31473
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