Abstract

In this article, surface soil moisture was retrieved from Radarsat-2 and polarimetric target decomposition data by using semiempirical models and machine learning methods. The semiempirical models and machine learning techniques employed were Oh (1992), Dubois (1995), Oh (2004) and Generalized Regression Neural Network (GRNN), Least Squares - Support Vector Machine (LS-SVM), Extreme Learning Machine (ELM), Kernel based Extreme Learning Machine (KELM), Adaptive Network based Fuzzy Inference System (ANFIS), respectively. In addition, Yamaguchi, van Zyl, Freeman-Durden, H/A/α and Cloude polarimetric target decomposition methods were used in this study. For soil moisture inversion, firstly, preprocessing was applied to the Radarsat-2 image of two different dates with bare and moderately vegetated soil. Then, sigma nought coefficients and the polarimetric decomposition components were extracted as feature vector from preprocessed SAR image pixels corresponding to ground measured points. Lastly, sigma nought coefficients were used in semiempirical inversion models, and sigma nought coefficients and polarimetric decomposition components were used as input to machine learning methods. The best accuracy results for semiempirical models were 13.01 vol. % and 17.91 vol. % Root Mean Square Error (RMSE) for bare and moderately vegetated soil, respectively. The best accuracy for machine learning techniques were 4.04 vol. % and 2.72 vol. % RMSE for two dates, respectively. The results indicated that the machine learning techniques performed much better than the semiempirical models.

Highlights

  • Soil moisture is a very important parameter for agriculture, hydrology and climatology [1]

  • The final Radarsat-2 Synthetic Aperture Radar (SAR) data derived for two periods using sigma nought and polarimetric techniques were presented in Figure 6 and 7

  • The performance of semiempirical and machine learning models was evaluated for soil moisture inversion employing Radarsat-2 SAR imagery

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Summary

INTRODUCTION

Soil moisture is a very important parameter for agriculture, hydrology and climatology [1]. H. Acar et al.: Soil Moisture Inversion via Semiempirical and Machine Learning Methods with Full-Polarization Radarsat-2 and Polarimetric Target Decomposition Data: A comparative study. Machine learning approaches used to retrieve soil moisture include Artificial Neural Networks (ANN), Support Vector Machine (SVM), Relevant Vector Machine (RVM) and Adaptive Network Based Fuzzy Inference System (ANFIS) [12] These approaches were originally developed to solve classification problems but were successfully applied to inversion problems later. The training dataset was obtained from the simulated data of IEM model The performance of this approach was measured with 6 % RMSE value for estimated volumetric soil moisture content. Pasolli et al employed an SVR model on Radarsat-2 imagery [15] They used HH and HV channels of polarimetric features to inverse the soil moisture and the accuracy was presented with an RMSE of 4.85 %. Study results, discussion and conclusions are presented

STUDY AREA
GROUND MEASUREMENTS
SAR IMAGERY AND PREPROCESSING
SEMIEMPIRICAL MODELS
MACHINE LEARNING METHODS
POLARIMETRIC DECOMPOSITION MODELS
RESULTS AND DISCUSSION
CONCLUSIONS
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