Publication | Open Access
Deep Learning-Based Classification Methods for Remote Sensing Images in Urban Built-Up Areas
115
Citations
38
References
2019
Year
Remote Sensing ImagesConvolutional Neural NetworkEngineeringUrban Built-up AreasLand CoverRemote Sensing ApplicationsImage ClassificationUrban AreasImage AnalysisData SciencePattern RecognitionMachine VisionFeature LearningObject DetectionGeographyDeep LearningLand Cover MapComputer VisionRemote SensingCover Mapping
Urban areas have been focused recently on the remote sensing applications since their function closely relates to the distribution of built-up areas, where reflectivity or scattering characteristics are the same or similar. Traditional pixel-based methods cannot discriminate the types of urban built-up areas very well. This paper investigates a deep learning-based classification method for remote sensing images, particularly for high spatial resolution remote sensing (HSRRS) images with various changes and multi-scene classes. Specifically, to help develop the corresponding classification methods in urban built-up areas, we consider four deep neural networks (DNNs): 1) convolutional neural network (CNN); 2) capsule networks (CapsNet); 3) same model with a different training rounding based on CNN (SMDTR-CNN); and 4) same model with different training rounding based on CapsNet (SMDTR-CapsNet). The performances of the proposed methods are evaluated in terms of overall accuracy, kappa coefficient, precision, and confusion matrix. The results revealed that SMDTR-CNN obtained the best overall accuracy (95.0%) and kappa coefficient (0.944) while also improving the precision of parking lot and resident samples by 1% and 4%, respectively.
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