Application of Artificial Intelligence to monitor changes in land use in the BacTu Liem District area, Hanoi, during the period 2019-2023
Authors/Creators
Description
Artificial Intelligence is currently being applied with great effectiveness in various fields. There have been
studies utilizing machine learning algorithms to classify land use, land cover from satellite images. This research
employs AI with the Random Forest machine learning algorithm to classify, and monitor land use, land cover from
Sentinel-2 images in the Bac Tu Liem District, Hanoi, during the period 2019-2023. The results of the study have
indicated a decrease of 5.32% in the area covered by dense vegetation, while, conversely, the residential area has
increased by 5.27% equivalent to 232.80 hectares after 5 years
Files
B4_2pp23_30.pdf
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Additional details
Identifiers
- ISSN
- 2615-9481
Software
- Repository URL
- https://www.geocartagis.org/
References
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