Classifying Vehicle Activity to Improve Point of Interest Extraction
Knowledge of drivers’ mobility patterns is useful for enabling context-aware intelligent vehicle functionality, such as route suggestions, cabin preconditioning, and power management for electric vehicles. Such patterns are often described in terms of the Points of Interest (PoIs) visited by an indi...
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Hindawi Limited
2021-01-01
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Series: | Mobile Information Systems |
Online Access: | http://dx.doi.org/10.1155/2021/9973681 |
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doaj-26f9debf739a47088dc6ad0f28e5cdd02021-09-13T01:23:32ZengHindawi LimitedMobile Information Systems1875-905X2021-01-01202110.1155/2021/9973681Classifying Vehicle Activity to Improve Point of Interest ExtractionJames Van Hinsbergh0Nathan Griffiths1Phillip Taylor2Zhou Xu3Alex Mouzakitis4Department of Computer ScienceDepartment of Computer ScienceDepartment of Computer ScienceJaguar Land RoverJaguar Land RoverKnowledge of drivers’ mobility patterns is useful for enabling context-aware intelligent vehicle functionality, such as route suggestions, cabin preconditioning, and power management for electric vehicles. Such patterns are often described in terms of the Points of Interest (PoIs) visited by an individual. However, existing PoI extraction methods are general purpose and typically rely on detecting periods of low mobility, meaning that when they are applied to vehicle data, they often extract a large number of false PoIs (for example, incorrectly extracting PoIs due to stopping in traffic), reducing their usefulness. To reduce the number of false PoIs that are extracted, we propose using features derived from vehicle signals, such as the selected gear and status of doors, to classify candidate PoIs and filter out those that are irrelevant. In this paper, we (i) present Activity-based Vehicle PoI Extraction (AVPE), a wrapper method around existing PoI extraction methods, that utilizes a postclustering classification stage to filter out false PoIs, (ii) evaluate the benefits of AVPE compared to three state-of-the-art general purpose PoI extraction algorithms, and (iii) demonstrate the effectiveness of AVPE when applied to real-world driving data.http://dx.doi.org/10.1155/2021/9973681 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
James Van Hinsbergh Nathan Griffiths Phillip Taylor Zhou Xu Alex Mouzakitis |
spellingShingle |
James Van Hinsbergh Nathan Griffiths Phillip Taylor Zhou Xu Alex Mouzakitis Classifying Vehicle Activity to Improve Point of Interest Extraction Mobile Information Systems |
author_facet |
James Van Hinsbergh Nathan Griffiths Phillip Taylor Zhou Xu Alex Mouzakitis |
author_sort |
James Van Hinsbergh |
title |
Classifying Vehicle Activity to Improve Point of Interest Extraction |
title_short |
Classifying Vehicle Activity to Improve Point of Interest Extraction |
title_full |
Classifying Vehicle Activity to Improve Point of Interest Extraction |
title_fullStr |
Classifying Vehicle Activity to Improve Point of Interest Extraction |
title_full_unstemmed |
Classifying Vehicle Activity to Improve Point of Interest Extraction |
title_sort |
classifying vehicle activity to improve point of interest extraction |
publisher |
Hindawi Limited |
series |
Mobile Information Systems |
issn |
1875-905X |
publishDate |
2021-01-01 |
description |
Knowledge of drivers’ mobility patterns is useful for enabling context-aware intelligent vehicle functionality, such as route suggestions, cabin preconditioning, and power management for electric vehicles. Such patterns are often described in terms of the Points of Interest (PoIs) visited by an individual. However, existing PoI extraction methods are general purpose and typically rely on detecting periods of low mobility, meaning that when they are applied to vehicle data, they often extract a large number of false PoIs (for example, incorrectly extracting PoIs due to stopping in traffic), reducing their usefulness. To reduce the number of false PoIs that are extracted, we propose using features derived from vehicle signals, such as the selected gear and status of doors, to classify candidate PoIs and filter out those that are irrelevant. In this paper, we (i) present Activity-based Vehicle PoI Extraction (AVPE), a wrapper method around existing PoI extraction methods, that utilizes a postclustering classification stage to filter out false PoIs, (ii) evaluate the benefits of AVPE compared to three state-of-the-art general purpose PoI extraction algorithms, and (iii) demonstrate the effectiveness of AVPE when applied to real-world driving data. |
url |
http://dx.doi.org/10.1155/2021/9973681 |
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