2023
DOI: 10.3390/land12081616
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Improving Dryland Urban Land Cover Classification Accuracy Using a Classical Convolution Neural Network

Abstract: Reliable information of land cover dynamics in dryland cities is crucial for understanding the anthropogenic impacts on fragile environments. However, reduced classification accuracy of dryland cities often occurs in global land cover data. Although many advanced classification techniques (i.e., convolutional neural networks (CNN)) have been intensively applied to classify urban land cover because of their excellent performance, specific classification models focusing on typical dryland cities are still scarce… Show more

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