Author:
Aryal Jagannath,Sitaula Chiranjibi,Frery Alejandro C.
Abstract
AbstractAccurate spatial information on Land use and land cover (LULC) plays a crucial role in city planning. A widely used method of obtaining accurate LULC maps is a classification of the categories, which is one of the challenging problems. Attempts have been made considering spectral (Sp), statistical (St), and index-based (Ind) features in developing LULC maps for city planning. However, no work has been reported to automate LULC performance modeling for their robustness with machine learning (ML) algorithms. In this paper, we design seven schemes and automate the LULC performance modeling with six ML algorithms-Random Forest, Support Vector Machine with Linear kernel, Support Vector Machine with Radial basis function kernel, Artificial Neural Network, Naïve Bayes, and Generalised Linear Model for the city of Melbourne, Australia on Sentinel-2A images. Experimental results show that the Random Forest outperforms remaining ML algorithms in the classification accuracy (0.99) on all schemes. The robustness and statistical analysis of the ML algorithms (for example, Random Forest imparts over 0.99 F1-score for all five categories and p value $$\le$$
≤
0.05 from Wilcoxon ranked test over accuracy measures) against varying training splits demonstrate the effectiveness of the proposed schemes. Thus, providing a robust measure of LULC maps in city planning.
Publisher
Springer Science and Business Media LLC
Reference50 articles.
1. Scott, G. J., England, M. R., Starms, W. A., Marcum, R. A. & Davis, C. H. Training deep convolutional neural networks for land-cover classification of high-resolution imagery. IEEE Geosci. Remote Sens. Lett. 14, 549–553 (2017).
2. Carranza-García, M., García-Gutiérrez, J. & Riquelme, J. C. A framework for evaluating land use and land cover classification using convolutional neural networks. Remote Sens. 11, 274 (2019).
3. Sitaula, C., KC, S. & Aryal, J. Enhanced multi-level features for very high resolution remote sensing scene classification. arXiv preprintarXiv:2305.00679 (2023).
4. Wang, Y.-C., Feng, C.-C. & VC, H. Integrating multi-sensor remote sensing data for land use/cover mapping in a tropical mountainous area in Northern Thailand. Geogr. Res. 50, 320–331 (2012).
5. Xu, Z. et al. Multisource earth observation data for land-cover classification using random forest. IEEE Geosci. Remote Sens. Lett. 15, 789–793 (2018).
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