2022
DOI: 10.3390/rs14133107
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Monitoring and Predicting Channel Morphology of the Tongtian River, Headwater of the Yangtze River Using Landsat Images and Lightweight Neural Network

Abstract: The Tongtian River is the source of the Yangtze River and is a national key ecological reserve in China. Monitoring and predicting the changes and mechanisms of the Tongtian River channel morphology are beneficial to protecting the “Asian Water Tower”. This study aims to quantitatively monitor and predict the accretion and erosion area of the Tongtian River channel morphology during the past 30 years (1990–2020). Firstly, the water bodies of the Tongtian River were extracted and the accretion and erosion areas… Show more

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“…Application of machine learning techniques for classification of water and land pixels with focus on assessing river morphological characteries is gaining prominence. Some recent examples include monitoring channel morphology of Yangtze River headwater using lightweight neural network [26], deep convolutional neural network for characterizing riverscapes in Norway [27], and identifying barriers in stream network using random forest classifier [28]. However, machine learning methods require training datasets, which are not readily available in countries like Myanmar.…”
Section: Introductionmentioning
confidence: 99%
“…Application of machine learning techniques for classification of water and land pixels with focus on assessing river morphological characteries is gaining prominence. Some recent examples include monitoring channel morphology of Yangtze River headwater using lightweight neural network [26], deep convolutional neural network for characterizing riverscapes in Norway [27], and identifying barriers in stream network using random forest classifier [28]. However, machine learning methods require training datasets, which are not readily available in countries like Myanmar.…”
Section: Introductionmentioning
confidence: 99%