DeepGolf: A fine-grained perception framework for golf course distribution in the real world based on multi-source remote sensing data
Golf courses, while primarily serving as recreational spaces for high-income populations, occupy significant land areas and thus require precise spatial mapping to support land use planning and environmental management. Traditionally, it has been prohibitively expensive to accurately measure their b...
Saved in:
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Elsevier
2025-02-01
|
Series: | International Journal of Applied Earth Observations and Geoinformation |
Subjects: | |
Online Access: | http://www.sciencedirect.com/science/article/pii/S156984322500041X |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
_version_ | 1825206968156946432 |
---|---|
author | Ning Li Yingchao Feng Wenhui Diao Xian Sun Liang Cheng Kun Fu |
author_facet | Ning Li Yingchao Feng Wenhui Diao Xian Sun Liang Cheng Kun Fu |
author_sort | Ning Li |
collection | DOAJ |
description | Golf courses, while primarily serving as recreational spaces for high-income populations, occupy significant land areas and thus require precise spatial mapping to support land use planning and environmental management. Traditionally, it has been prohibitively expensive to accurately measure their built-up areas. This paper presents DeepGolf, an advanced framework that integrates geographic information with deep neural features to accurately extract golf course distributions in real-world scenarios. DeepGolf is structured into three main modules: geographic query, detection, and fine extraction. It employs a robust detection strategy that integrates surface cover, wind speed, and settlement data to identify candidate regions, which is then followed by a grid-based recognition approach and a lightweight Dual-Path Difference Fusion Enhancement (DPDFE) network for detailed localization and fine extraction. When applied across Japan, DeepGolf successfully identifies 2,113 golf courses, covering an area of approximately 2,273 km2 (∼0.6 % of Japan’s land area). The geographic query and detection modules reduce candidate areas by 95.5 % and 98.9 %, respectively. The DPDFE network further enhances accuracy, improving IoU and F1 scores by 2.1 % and 1.2 %, achieving an overall accuracy of 89.8 %. Results indicate that golf courses are primarily concentrated around urban fringes, with the highest densities in the Kanto and Kinki regions. Non-urban areas contain 97.3 % of the courses, while urban regions account for just 2.7 %. DeepGolf serves as an effective tool for precise golf course mapping, supporting enhanced environmental management and resource planning. |
format | Article |
id | doaj-art-a15a73c830a843d5b82cf7bee33be2a7 |
institution | Kabale University |
issn | 1569-8432 |
language | English |
publishDate | 2025-02-01 |
publisher | Elsevier |
record_format | Article |
series | International Journal of Applied Earth Observations and Geoinformation |
spelling | doaj-art-a15a73c830a843d5b82cf7bee33be2a72025-02-07T04:47:19ZengElsevierInternational Journal of Applied Earth Observations and Geoinformation1569-84322025-02-01136104394DeepGolf: A fine-grained perception framework for golf course distribution in the real world based on multi-source remote sensing dataNing Li0Yingchao Feng1Wenhui Diao2Xian Sun3Liang Cheng4Kun Fu5Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190 China; Key Laboratory of Target Cognition and Application Technology (TCAT), Aerospace Information Research Institute, Beijing 100190 ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190 China; Key Laboratory of Target Cognition and Application Technology (TCAT), Aerospace Information Research Institute, Beijing 100190 ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190 China; Key Laboratory of Target Cognition and Application Technology (TCAT), Aerospace Information Research Institute, Beijing 100190 China; Corresponding author.Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190 China; Key Laboratory of Target Cognition and Application Technology (TCAT), Aerospace Information Research Institute, Beijing 100190 ChinaSchool of Geography and Ocean Science (Nanjing University), 163 Xianlin Road, Nanjing 210023 ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190 China; Key Laboratory of Target Cognition and Application Technology (TCAT), Aerospace Information Research Institute, Beijing 100190 ChinaGolf courses, while primarily serving as recreational spaces for high-income populations, occupy significant land areas and thus require precise spatial mapping to support land use planning and environmental management. Traditionally, it has been prohibitively expensive to accurately measure their built-up areas. This paper presents DeepGolf, an advanced framework that integrates geographic information with deep neural features to accurately extract golf course distributions in real-world scenarios. DeepGolf is structured into three main modules: geographic query, detection, and fine extraction. It employs a robust detection strategy that integrates surface cover, wind speed, and settlement data to identify candidate regions, which is then followed by a grid-based recognition approach and a lightweight Dual-Path Difference Fusion Enhancement (DPDFE) network for detailed localization and fine extraction. When applied across Japan, DeepGolf successfully identifies 2,113 golf courses, covering an area of approximately 2,273 km2 (∼0.6 % of Japan’s land area). The geographic query and detection modules reduce candidate areas by 95.5 % and 98.9 %, respectively. The DPDFE network further enhances accuracy, improving IoU and F1 scores by 2.1 % and 1.2 %, achieving an overall accuracy of 89.8 %. Results indicate that golf courses are primarily concentrated around urban fringes, with the highest densities in the Kanto and Kinki regions. Non-urban areas contain 97.3 % of the courses, while urban regions account for just 2.7 %. DeepGolf serves as an effective tool for precise golf course mapping, supporting enhanced environmental management and resource planning.http://www.sciencedirect.com/science/article/pii/S156984322500041XMulti-Source dataGolf coursesSpatial distributionRemote sensingReal worldDeep learning |
spellingShingle | Ning Li Yingchao Feng Wenhui Diao Xian Sun Liang Cheng Kun Fu DeepGolf: A fine-grained perception framework for golf course distribution in the real world based on multi-source remote sensing data International Journal of Applied Earth Observations and Geoinformation Multi-Source data Golf courses Spatial distribution Remote sensing Real world Deep learning |
title | DeepGolf: A fine-grained perception framework for golf course distribution in the real world based on multi-source remote sensing data |
title_full | DeepGolf: A fine-grained perception framework for golf course distribution in the real world based on multi-source remote sensing data |
title_fullStr | DeepGolf: A fine-grained perception framework for golf course distribution in the real world based on multi-source remote sensing data |
title_full_unstemmed | DeepGolf: A fine-grained perception framework for golf course distribution in the real world based on multi-source remote sensing data |
title_short | DeepGolf: A fine-grained perception framework for golf course distribution in the real world based on multi-source remote sensing data |
title_sort | deepgolf a fine grained perception framework for golf course distribution in the real world based on multi source remote sensing data |
topic | Multi-Source data Golf courses Spatial distribution Remote sensing Real world Deep learning |
url | http://www.sciencedirect.com/science/article/pii/S156984322500041X |
work_keys_str_mv | AT ningli deepgolfafinegrainedperceptionframeworkforgolfcoursedistributionintherealworldbasedonmultisourceremotesensingdata AT yingchaofeng deepgolfafinegrainedperceptionframeworkforgolfcoursedistributionintherealworldbasedonmultisourceremotesensingdata AT wenhuidiao deepgolfafinegrainedperceptionframeworkforgolfcoursedistributionintherealworldbasedonmultisourceremotesensingdata AT xiansun deepgolfafinegrainedperceptionframeworkforgolfcoursedistributionintherealworldbasedonmultisourceremotesensingdata AT liangcheng deepgolfafinegrainedperceptionframeworkforgolfcoursedistributionintherealworldbasedonmultisourceremotesensingdata AT kunfu deepgolfafinegrainedperceptionframeworkforgolfcoursedistributionintherealworldbasedonmultisourceremotesensingdata |