Comparison of Machine-Learning Methods for Urban Land-Use Mapping in Hangzhou City, China
Urban land-use information is important for urban land-resource planning and management. However, current methods using traditional surveys cannot meet the demand for the rapid development of urban land management. There is an urgent need to develop new methods to overcome the shortcomings of conven...
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MDPI AG
2020-08-01
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Series: | Remote Sensing |
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Online Access: | https://www.mdpi.com/2072-4292/12/17/2817 |
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author | Wanliu Mao Debin Lu Li Hou Xue Liu Wenze Yue |
author_facet | Wanliu Mao Debin Lu Li Hou Xue Liu Wenze Yue |
author_sort | Wanliu Mao |
collection | DOAJ |
description | Urban land-use information is important for urban land-resource planning and management. However, current methods using traditional surveys cannot meet the demand for the rapid development of urban land management. There is an urgent need to develop new methods to overcome the shortcomings of conventional methods. To address the issue, this study used the random forest (RF), support vector machine (SVM), and artificial neural network (ANN) models to build machine-leaning methods for urban land-use classification. Taking Hangzhou as an example, these machine-leaning methods could all successfully classify the essential urban land use into 6 Level I classes and 13 Level II classes based on the semantic features extracted from Sentinel-2A images, multi-source features of types of points of interest (POIs), land surface temperature, night lights, and building height. The validation accuracy of the RF model for the Level I and Level II land use was 79.88% and 71.89%, respectively, performing better compared to SVM (78.40% and 68.64%) and ANN models (71.30% and 63.02%). However, the variations of the user accuracy among the methods depended on the urban land-use level. For the Level I land-use classification, the user accuracy was high, except for the transportation land by all methods. In general, the RF and SVM models performed better than the ANN model. For the Level II land-use classification, the user accuracy of different models was quite distinct. With the RF model, the user accuracy of educational and medical land was above 80%. Moreover, with the SVM model, the user accuracy of the business office and educational land classification was above 75%. However, the user accuracy of the ANN model on the Level II land-use classification was poor. Our results showed that the RF model performs best, followed by SVM model, and ANN model was relatively poor in the essential urban land-use classification. The results proved that the use of machine-learning methods can quickly extract land-use types with high accuracy, and provided a better method choice for urban land-use information acquisition. |
first_indexed | 2024-03-10T16:42:12Z |
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id | doaj.art-a8cdafbeaf414fe28dd05ff5f2c0bd40 |
institution | Directory Open Access Journal |
issn | 2072-4292 |
language | English |
last_indexed | 2024-03-10T16:42:12Z |
publishDate | 2020-08-01 |
publisher | MDPI AG |
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series | Remote Sensing |
spelling | doaj.art-a8cdafbeaf414fe28dd05ff5f2c0bd402023-11-20T11:58:00ZengMDPI AGRemote Sensing2072-42922020-08-011217281710.3390/rs12172817Comparison of Machine-Learning Methods for Urban Land-Use Mapping in Hangzhou City, ChinaWanliu Mao0Debin Lu1Li Hou2Xue Liu3Wenze Yue4Department of Land Management, Zhejiang University, Hangzhou 310058, ChinaDepartment of Land Management, Zhejiang University, Hangzhou 310058, ChinaDepartment of Land Management, Zhejiang University, Hangzhou 310058, ChinaDepartment of Land Management, Zhejiang University, Hangzhou 310058, ChinaDepartment of Land Management, Zhejiang University, Hangzhou 310058, ChinaUrban land-use information is important for urban land-resource planning and management. However, current methods using traditional surveys cannot meet the demand for the rapid development of urban land management. There is an urgent need to develop new methods to overcome the shortcomings of conventional methods. To address the issue, this study used the random forest (RF), support vector machine (SVM), and artificial neural network (ANN) models to build machine-leaning methods for urban land-use classification. Taking Hangzhou as an example, these machine-leaning methods could all successfully classify the essential urban land use into 6 Level I classes and 13 Level II classes based on the semantic features extracted from Sentinel-2A images, multi-source features of types of points of interest (POIs), land surface temperature, night lights, and building height. The validation accuracy of the RF model for the Level I and Level II land use was 79.88% and 71.89%, respectively, performing better compared to SVM (78.40% and 68.64%) and ANN models (71.30% and 63.02%). However, the variations of the user accuracy among the methods depended on the urban land-use level. For the Level I land-use classification, the user accuracy was high, except for the transportation land by all methods. In general, the RF and SVM models performed better than the ANN model. For the Level II land-use classification, the user accuracy of different models was quite distinct. With the RF model, the user accuracy of educational and medical land was above 80%. Moreover, with the SVM model, the user accuracy of the business office and educational land classification was above 75%. However, the user accuracy of the ANN model on the Level II land-use classification was poor. Our results showed that the RF model performs best, followed by SVM model, and ANN model was relatively poor in the essential urban land-use classification. The results proved that the use of machine-learning methods can quickly extract land-use types with high accuracy, and provided a better method choice for urban land-use information acquisition.https://www.mdpi.com/2072-4292/12/17/2817urban land usemachine-learning methodmulti-source dataHangzhou |
spellingShingle | Wanliu Mao Debin Lu Li Hou Xue Liu Wenze Yue Comparison of Machine-Learning Methods for Urban Land-Use Mapping in Hangzhou City, China Remote Sensing urban land use machine-learning method multi-source data Hangzhou |
title | Comparison of Machine-Learning Methods for Urban Land-Use Mapping in Hangzhou City, China |
title_full | Comparison of Machine-Learning Methods for Urban Land-Use Mapping in Hangzhou City, China |
title_fullStr | Comparison of Machine-Learning Methods for Urban Land-Use Mapping in Hangzhou City, China |
title_full_unstemmed | Comparison of Machine-Learning Methods for Urban Land-Use Mapping in Hangzhou City, China |
title_short | Comparison of Machine-Learning Methods for Urban Land-Use Mapping in Hangzhou City, China |
title_sort | comparison of machine learning methods for urban land use mapping in hangzhou city china |
topic | urban land use machine-learning method multi-source data Hangzhou |
url | https://www.mdpi.com/2072-4292/12/17/2817 |
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