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Sadidi J, tamnia F, rezaian H. Assessment of using artificial intelligence in completeness of Volunteer Geographic Information. A case study for Open Street Map (OSM) landuse data.. Journal of Spatial Analysis Environmental Hazards 2024; 11 (1) : 1
URL: http://jsaeh.khu.ac.ir/article-1-3398-en.html
1- Kharazmi university , jsadidikhu@gmail.com
2- Kharazmi university
Abstract:   (1559 Views)
Nowadays, deep learning as a branch of artificial intelligence acts as an alternative for human with hopeful outcomes. Open Street Map as the biggest open source data is used as a complementary data sources for spatial projects. It is notable that is some advanced counties the accuracy of VGI data is higher than governmental official data. This research aims to use artificial intelligence to produce and subsequently promote completeness of OSM data. Res_UNet architecture was utilized to train landuse categories to the network. The result shows that IoU metric is about 83 percent that implies a high accuracy paradigm. Then, united-based method was used to calculated completeness of OSM data. The unit-based results show that completeness of building blocks, forest, fruits garden and agriculture land are: 3.6, 9.7, 90.4 and 81.88 respectively. It shows the low volunteer  participation rate to produce OSM data. On the other side the high accuracy achieved by deep learning leads us to complete OSM data by artificial intelligence instead of human prepared data. The advantage of using machine rather than human may be utilized in undeveloped countries or low density population regions as well as inaccessible areas.
 
Article number: 1
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Type of Study: Research | Subject: Special
Received: 2023/11/4 | Accepted: 2023/12/7 | Published: 2024/08/31

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