Abstract

Rice is an important agricultural crop in the Southwest Hilly Area, China, but there has been a lack of efficient and accurate monitoring methods in the region. Recently, convolutional neural networks (CNNs) have obtained considerable achievements in the remote sensing community. However, it has not been widely used in mapping a rice paddy, and most studies lack the comparison of classification effectiveness and efficiency between CNNs and other classic machine learning models and their transferability. This study aims to develop various machine learning classification models with remote sensing data for comparing the local accuracy of classifiers and evaluating the transferability of pretrained classifiers. Therefore, two types of experiments were designed: local classification experiments and model transferability experiments. These experiments were conducted using cloud-free Sentinel-2 multi-temporal data in Banan District and Zhongxian County, typical hilly areas of Southwestern China. A pure pixel extraction algorithm was designed based on land-use vector data and a Google Earth Online image. Four convolutional neural network (CNN) algorithms (one-dimensional (Conv-1D), two-dimensional (Conv-2D) and three-dimensional (Conv-3D_1 and Conv-3D_2) convolutional neural networks) were developed and compared with four widely used classifiers (random forest (RF), extreme gradient boosting (XGBoost), support vector machine (SVM) and multilayer perceptron (MLP)). Recall, precision, overall accuracy (OA) and F1 score were applied to evaluate classification accuracy. The results showed that Conv-2D performed best in local classification experiments with OA of 93.14% and F1 score of 0.8552 in Banan District, OA of 92.53% and F1 score of 0.8399 in Zhongxian County. CNN-based models except Conv-1D provided more desirable performance than non-CNN classifiers. Besides, among the non-CNN classifiers, XGBoost received the best result with OA of 89.73% and F1 score of 0.7742 in Banan District, SVM received the best result with OA of 88.57% and F1 score of 0.7538 in Zhongxian County. In model transferability experiments, almost all CNN classifiers had low transferability. RF and XGBoost models have achieved acceptable F1 scores for transfer (RF = 0.6673 and 0.6469, XGBoost = 0.7171 and 0.6709, respectively).

Highlights

  • Food security has become a global and international topic [1,2]

  • In Zhongxian County, Conv-2D achieved the highest values of precision (0.8899), overall accuracy (OA) (0.9253) and F1 scores (0.8399) while Conv-1D gave the highest values of recall (0.9585)

  • Conv-2D and Conv-3D_2 presented similar values of F1 score, but Conv-2D had a lower training time (230 s) and testing time (2320 s) than Conv-3D_2. Both in Banan District and Zhongxian County, Conv-1D had the lowest values of precision (0.7827 and 0.5929), OA (0.8838 and 0.8340) and F1 score (0.7544 and 0.7451), indicating that the convolution in the spectral direction only might be unsuitable for rice planting region extraction over the study site

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Summary

Introduction

As one of the most important staple foods, is widely grown in Southern China. The acceleration of urbanization may create continual pressure in the rice cultivation area [4]. Other adverse factors such as droughts, soil degradation and economic restructuring should not be overlooked when studying rice production patterns [5]. Rice paddies have been identified as an important source of methane (CH4), which has a significant impact on the global greenhouse effect [7]. It is essential to map the spatial distribution and planting area of paddy rice at a large scale for guiding rice production, water utilization, climate change and government policy decisions

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