A Novel Data Fusion Technique For Snow Parameter Retrieval

IGARSS 2018 - 2018 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM(2018)

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摘要
The main idea of this study is the development of an innovative data fusion method through which state-of-theart remotely sensed products and hydrological modelling simulations can be integrated to improve the retrieval and the reliability of snow cover and snow water equivalent mapping. The proposed method is based on a machine learning technique, Support Vector Machine (SVM), and on exploitation of two well-instrumented test-sites in EUREGIO region for the validation. Results show an improvement of performances with respect to single products from remote sensing and model. On EUREGIO scale the accuracy of snow cover mapping obtained from fusion reaches 0.95.
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关键词
snow cover, snow water equivalent, support vector machine, remote sensing, hydrological model, data fusion
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