Abstract

The use of remote sensing technology to monitor farmland is currently the mainstream method for crop research. However, in cloudy and misty regions, the use of optical remote sensing image is limited. Synthetic aperture radar (SAR) technology has many advantages, including high resolution, multi-mode, and multi-polarization. Moreover, it can penetrate clouds and mists, can be used for all-weather and all-time Earth observation, and is sensitive to the shape of ground objects. Therefore, it is widely used in agricultural monitoring. In this study, the polarization backscattering coefficient on time-series SAR images during the rice-growing period was analyzed. The rice identification results and accuracy of InSAR technology were compared with those of three schemes (single-time-phase SAR, multi-time-phase SAR, and combination of multi-time-phase SAR and InSAR). Results show that VV and VH polarization coherence coefficients can well distinguish artificial buildings. In particular, VV polarization coherence coefficients can well distinguish rice from water and vegetation in August and September, whereas VH polarization coherence coefficients can well distinguish rice from water and vegetation in August and October. The rice identification accuracy of single-time series Sentinel-1 SAR image (78%) is lower than that of multi-time series SAR image combined with InSAR technology (81%). In this study, Guanghan City, a cloudy region, was used as the study site, and a good verification result was obtained.

Highlights

  • Satellite remote sensing has become an important means of crop monitoring

  • On the the polarization basis of the comprehensive analysis onby coherence coefficients, this study shows that interferogram introduced the polarization coherence coefficients, this study shows that the polarization interferoInSAR

  • The core area of Chengdu Plain was taken as a case example

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Summary

Introduction

Satellite remote sensing has become an important means of crop monitoring. Optical remote sensing can be used to monitor relevant parameters in an all-around manner during the rice-growing period. To classify agricultural crops by remote sensing, a discriminant function is established on the basis of crop characteristics, including brightness, hue, position, texture, and structure. Optical remote sensing data are often affected by cloud, rain, fog, and other bad weather conditions in practical applications. Cloud cover and frequent rainfall in mountainous or basin areas make it difficult to find a suitable image for studying the rice-growing season. The optical image may contain similar objects with different spectra and different objects with similar spectra

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