Comparison between a Machine-Learning-Based Method and a Water-Index-Based Method for Shoreline Mapping Using a High-Resolution Satellite Image Acquired in Hwado Island, South Korea

Shoreline-mapping tasks using remotely sensed image sources were carried out using the machine learning techniques or using water indices derived from image sources. This research compared two different methods for mapping accurate shorelines using the high-resolution satellite image acquired in Hwa...

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Main Authors: Yun-Jae Choung, Myung-Hee Jo
Format: Article
Language:English
Published: Hindawi Limited 2017-01-01
Series:Journal of Sensors
Online Access:http://dx.doi.org/10.1155/2017/8245204
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spelling doaj-bd31c8209f2c43a98930ee37fa7365132020-11-25T01:07:31ZengHindawi LimitedJournal of Sensors1687-725X1687-72682017-01-01201710.1155/2017/82452048245204Comparison between a Machine-Learning-Based Method and a Water-Index-Based Method for Shoreline Mapping Using a High-Resolution Satellite Image Acquired in Hwado Island, South KoreaYun-Jae Choung0Myung-Hee Jo1Research Institute of Spatial Information Technology, Geo C&I Co. Ltd., 435 Hwarang-ro, Dong-gu, Daegu 41165, Republic of KoreaDepartment of Aero-Satellite Geo-Informatics Engineering, School of Convergence and Fusion System Engineering, College of Science and Technology, Kyungpook National University, 2559 Gyeongsang-daero, Sangju 37224, Republic of KoreaShoreline-mapping tasks using remotely sensed image sources were carried out using the machine learning techniques or using water indices derived from image sources. This research compared two different methods for mapping accurate shorelines using the high-resolution satellite image acquired in Hwado Island, South Korea. The first shoreline was generated using a water-index-based method proposed in previous research, and the second shoreline was generated using a machine-learning-based method proposed in this research. The statistical results showed that both shorelines had high accuracies in the well-identified coastal zones while the second shoreline had better accuracy than the first shoreline in the coastal zones with irregular shapes and the shaded areas not identified by the water-index-based method. Both shorelines, however, had low accuracies in the coastal zones with the shaded areas not identified by both methods.http://dx.doi.org/10.1155/2017/8245204
collection DOAJ
language English
format Article
sources DOAJ
author Yun-Jae Choung
Myung-Hee Jo
spellingShingle Yun-Jae Choung
Myung-Hee Jo
Comparison between a Machine-Learning-Based Method and a Water-Index-Based Method for Shoreline Mapping Using a High-Resolution Satellite Image Acquired in Hwado Island, South Korea
Journal of Sensors
author_facet Yun-Jae Choung
Myung-Hee Jo
author_sort Yun-Jae Choung
title Comparison between a Machine-Learning-Based Method and a Water-Index-Based Method for Shoreline Mapping Using a High-Resolution Satellite Image Acquired in Hwado Island, South Korea
title_short Comparison between a Machine-Learning-Based Method and a Water-Index-Based Method for Shoreline Mapping Using a High-Resolution Satellite Image Acquired in Hwado Island, South Korea
title_full Comparison between a Machine-Learning-Based Method and a Water-Index-Based Method for Shoreline Mapping Using a High-Resolution Satellite Image Acquired in Hwado Island, South Korea
title_fullStr Comparison between a Machine-Learning-Based Method and a Water-Index-Based Method for Shoreline Mapping Using a High-Resolution Satellite Image Acquired in Hwado Island, South Korea
title_full_unstemmed Comparison between a Machine-Learning-Based Method and a Water-Index-Based Method for Shoreline Mapping Using a High-Resolution Satellite Image Acquired in Hwado Island, South Korea
title_sort comparison between a machine-learning-based method and a water-index-based method for shoreline mapping using a high-resolution satellite image acquired in hwado island, south korea
publisher Hindawi Limited
series Journal of Sensors
issn 1687-725X
1687-7268
publishDate 2017-01-01
description Shoreline-mapping tasks using remotely sensed image sources were carried out using the machine learning techniques or using water indices derived from image sources. This research compared two different methods for mapping accurate shorelines using the high-resolution satellite image acquired in Hwado Island, South Korea. The first shoreline was generated using a water-index-based method proposed in previous research, and the second shoreline was generated using a machine-learning-based method proposed in this research. The statistical results showed that both shorelines had high accuracies in the well-identified coastal zones while the second shoreline had better accuracy than the first shoreline in the coastal zones with irregular shapes and the shaded areas not identified by the water-index-based method. Both shorelines, however, had low accuracies in the coastal zones with the shaded areas not identified by both methods.
url http://dx.doi.org/10.1155/2017/8245204
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AT myungheejo comparisonbetweenamachinelearningbasedmethodandawaterindexbasedmethodforshorelinemappingusingahighresolutionsatelliteimageacquiredinhwadoislandsouthkorea
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