GeoAI Dataset for Industrial Park Segmentation from Sentinel-2 Satellite Imagery and GEMS

Air pollution in East Asia presents critical environmental and health challenges, particularly in industrial regions affected by domestic and cross-border emissions. This study developed a GEO AI dataset specifically for industrial park segmentation, integrating Sentinel-2 satellite imagery, Geostat...

Full description

Bibliographic Details
Published in:Geo Data
Main Authors: Sung-Hyun Gong, Hyung-Sup Jung, Geun-han Kim, Geun-Hyouk Han, Il-Hoon Choi, Jin-Sung Hong
Format: Article
Language:English
Published: GeoAI Data Society 2025-03-01
Subjects:
Online Access:http://geodata.kr/upload/pdf/GD-2024-0054.pdf
_version_ 1849868800417071104
author Sung-Hyun Gong
Hyung-Sup Jung
Geun-han Kim
Geun-Hyouk Han
Il-Hoon Choi
Jin-Sung Hong
author_facet Sung-Hyun Gong
Hyung-Sup Jung
Geun-han Kim
Geun-Hyouk Han
Il-Hoon Choi
Jin-Sung Hong
author_sort Sung-Hyun Gong
collection DOAJ
container_title Geo Data
description Air pollution in East Asia presents critical environmental and health challenges, particularly in industrial regions affected by domestic and cross-border emissions. This study developed a GEO AI dataset specifically for industrial park segmentation, integrating Sentinel-2 satellite imagery, Geostationary Environment Monitoring Spectrometer (GEMS) geostationary satellite data, and Air Quality Monitoring Network data. Optimized for semantic segmentation tasks with labeled data specifically for industrial park classification, this dataset serves as a foundational asset for the precise identification and spatial tracking of major air pollution sources. We validated the dataset’s applicability using a modified U-Net model, achieving a mean intersection over union of 0.8146 and pixel accuracy of 0.9608, thereby demonstrating its potential as a tool for detecting and monitoring pollutant sources in industrial areas. With future expansion through additional temporal data and diverse pollutant measurements, this dataset is anticipated to support regional air quality monitoring efforts and inform strategies for pollution control across East Asia.
format Article
id doaj-art-ca6a2d722c514501b84e2b5a8a1feb67
institution Directory of Open Access Journals
issn 2713-5004
language English
publishDate 2025-03-01
publisher GeoAI Data Society
record_format Article
spelling doaj-art-ca6a2d722c514501b84e2b5a8a1feb672025-08-20T01:15:39ZengGeoAI Data SocietyGeo Data2713-50042025-03-0171364410.22761/GD.2024.0054178GeoAI Dataset for Industrial Park Segmentation from Sentinel-2 Satellite Imagery and GEMSSung-Hyun Gong0Hyung-Sup Jung1Geun-han Kim2Geun-Hyouk Han3Il-Hoon Choi4Jin-Sung Hong5 Integrated Master and PhD Student, Department of Geoinformatics, University of Seoul, 163 Seoulsiripdae-ro, Dongdaemun-gu, 02504 Seoul, South Korea Professor, Department of Geoinformatics, University of Seoul, 163 Seoulsiripdae-ro, Dongdaemun-gu, 02504 Seoul, South Korea Research Specialist, Division for Environmental Planning, Water and Land Research Group, Korea Environment Institute, 370 Sicheong-daero, 30147 Sejong, South Korea Director, Neighbor System, 135 Jungdae-ro, Songpa-gu, 05717 Seoul, South Korea Managing Director, Neighbor System, 135 Jungdae-ro, Songpa-gu, 05717 Seoul, South Korea Senior Manager, e-Terra, 551-17 Yangcheon-ro, Gangseo-gu, 07532 Seoul, South KoreaAir pollution in East Asia presents critical environmental and health challenges, particularly in industrial regions affected by domestic and cross-border emissions. This study developed a GEO AI dataset specifically for industrial park segmentation, integrating Sentinel-2 satellite imagery, Geostationary Environment Monitoring Spectrometer (GEMS) geostationary satellite data, and Air Quality Monitoring Network data. Optimized for semantic segmentation tasks with labeled data specifically for industrial park classification, this dataset serves as a foundational asset for the precise identification and spatial tracking of major air pollution sources. We validated the dataset’s applicability using a modified U-Net model, achieving a mean intersection over union of 0.8146 and pixel accuracy of 0.9608, thereby demonstrating its potential as a tool for detecting and monitoring pollutant sources in industrial areas. With future expansion through additional temporal data and diverse pollutant measurements, this dataset is anticipated to support regional air quality monitoring efforts and inform strategies for pollution control across East Asia.http://geodata.kr/upload/pdf/GD-2024-0054.pdfdeep learningindustrial parkai datasetsentinel-2air pollution
spellingShingle Sung-Hyun Gong
Hyung-Sup Jung
Geun-han Kim
Geun-Hyouk Han
Il-Hoon Choi
Jin-Sung Hong
GeoAI Dataset for Industrial Park Segmentation from Sentinel-2 Satellite Imagery and GEMS
deep learning
industrial park
ai dataset
sentinel-2
air pollution
title GeoAI Dataset for Industrial Park Segmentation from Sentinel-2 Satellite Imagery and GEMS
title_full GeoAI Dataset for Industrial Park Segmentation from Sentinel-2 Satellite Imagery and GEMS
title_fullStr GeoAI Dataset for Industrial Park Segmentation from Sentinel-2 Satellite Imagery and GEMS
title_full_unstemmed GeoAI Dataset for Industrial Park Segmentation from Sentinel-2 Satellite Imagery and GEMS
title_short GeoAI Dataset for Industrial Park Segmentation from Sentinel-2 Satellite Imagery and GEMS
title_sort geoai dataset for industrial park segmentation from sentinel 2 satellite imagery and gems
topic deep learning
industrial park
ai dataset
sentinel-2
air pollution
url http://geodata.kr/upload/pdf/GD-2024-0054.pdf
work_keys_str_mv AT sunghyungong geoaidatasetforindustrialparksegmentationfromsentinel2satelliteimageryandgems
AT hyungsupjung geoaidatasetforindustrialparksegmentationfromsentinel2satelliteimageryandgems
AT geunhankim geoaidatasetforindustrialparksegmentationfromsentinel2satelliteimageryandgems
AT geunhyoukhan geoaidatasetforindustrialparksegmentationfromsentinel2satelliteimageryandgems
AT ilhoonchoi geoaidatasetforindustrialparksegmentationfromsentinel2satelliteimageryandgems
AT jinsunghong geoaidatasetforindustrialparksegmentationfromsentinel2satelliteimageryandgems