A CNN-RF Hybrid Approach for Rice Paddy Fields Mapping in Indramayu Using Sentinel-1 and Sentinel-2 Data

Sudiana, Dodi and Rizkinia, Mia and Arief, Rahmat and De Arifani, Tiara and Lestari, Anugrah Indah and Kushardono, Dony and Prabuwono, Anton Satria and Sumantyo, Josaphat Tetuko Sri (2025) A CNN-RF Hybrid Approach for Rice Paddy Fields Mapping in Indramayu Using Sentinel-1 and Sentinel-2 Data. IEEE Access, 13. 23234 – 23246. ISSN 21693536

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Abstract

Rice, cultivated in paddy fields, is one of the staple foods in the world, especially in Asia. In Indonesia, a substantial number of rice paddy fields have been converted into residential or industrial areas, threatening food security. Therefore, it is necessary to monitor the adequacy of rice paddy field areas. Recently, remote sensing has become the most widely used method for mapping rice paddy fields. This research focuses on developing a classification model for rice paddy field mapping using remote sensing with radar and optical data fusion, including input variations in polarization, texture, and optical derivative indices. This study proposes the CNN-RF method, which combines a convolutional neural network (CNN) as a feature extractor and a random forest (RF) as a classifier. The experiment used combinations of input data, including variations of single and multisource data, to achieve optimal results. Research findings in some districts of Indramayu show that the scheme combining Sentinel-1 features with GLCM (gray-level co-occurrence matrix) and Sentinel-2 features with selected bands provides the best results, with an overall accuracy of 98.23 and a Kappa coefficient of 0.96, using the CNN-RF method. CNN-RF outperforms other classifiers owing to the hybrid learning combination, which improves the accuracy through feature extraction by CNN and handles complex relationships between features while reducing overfitting by RF. This study contributes to the development of accurate and efficient rice paddy field mapping techniques using remote sensing. © 2013 IEEE.

Item Type: Article
Impact Factor: Cited by: 0; All Open Access, Gold Open Access
Uncontrolled Keywords: Data fusion; Image coding; Image segmentation; Mapping; Network security; Optical remote sensing; Convolutional neural network; Convolutional neural network-random forest; Gray-level co-occurrence matrix; Grey-level co-occurrence matrixes; Paddy fields; Paddy mapping; Random forests; Rice paddy; Rice paddy field; Sentinel; Convolutional neural networks
Depositing User: Mr Ahmad Suhairi Mohamed Lazim
Date Deposited: 16 Aug 2025 17:59
Last Modified: 16 Aug 2025 17:59
URI: http://scholars.utp.edu.my/id/eprint/38963

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