Abstract

Winter wheat is the second largest food crop in China. It is important to obtain reliable winter wheat acreage to guarantee the food security for the most populous country in the world. This paper focuses on assessing the feasibility of in-season winter wheat mapping and investigating potential classification improvement by using SAR (Synthetic Aperture Radar) images, optical images, and the integration of both types of data in urban agricultural regions with complex planting structures in Southern China. Both SAR (Sentinel-1A) and optical (Landsat-8) data were acquired, and classification using different combinations of Sentinel-1A-derived information and optical images was performed using a support vector machine (SVM) and a random forest (RF) method. The interference coherence and texture images were obtained and used to assess the effect of adding them to the backscatter intensity images on the classification accuracy. The results showed that the use of four Sentinel-1A images acquired before the jointing period of winter wheat can provide satisfactory winter wheat classification accuracy, with an F1 measure of 87.89%. The combination of SAR and optical images for winter wheat mapping achieved the best F1 measure–up to 98.06%. The SVM was superior to RF in terms of the overall accuracy and the kappa coefficient, and was faster than RF, while the RF classifier was slightly better than SVM in terms of the F1 measure. In addition, the classification accuracy can be effectively improved by adding the texture and coherence images to the backscatter intensity data.

Highlights

  • Wheat is one of the world’s major food crops [1]

  • Winter wheat classification is the basis for acreage and yield estimates, which are important for public policy makers to develop food policies and economic plans [2,3]

  • Silva et al [15] compared the use of VV polarization, HV polarization, and HH polarization for crop classification; the results showed that the classification accuracy of HH polarization was better than VV polarization and HV polarization

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Summary

Introduction

Wheat is one of the world’s major food crops [1]. With the acceleration of urbanization in China, the amount of cultivated land has been decreasing, and food security has become an important issue.Winter wheat classification is the basis for acreage and yield estimates, which are important for public policy makers to develop food policies and economic plans [2,3]. The development of remote sensing technology provides a rich data source for crop classification. Optical remote sensing is susceptible to cloudy and rainy weather, and it is difficult to obtain ideal optical images in the critical period of winter wheat growth in Southern China. Compared with optical remote sensing, synthetic aperture radar (SAR) has all-weather, day and night imaging, canopy penetration, and high-resolution capabilities [7,8,9]. Due to these advantages, SAR has become an effective source of data for crop classification

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