2021
DOI: 10.48550/arxiv.2108.11535
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ChessMix: Spatial Context Data Augmentation for Remote Sensing Semantic Segmentation

Abstract: Labeling semantic segmentation datasets is a costly and laborious process if compared with tasks like image classification and object detection. This is especially true for remote sensing applications that not only work with extremely high spatial resolution data but also commonly require the knowledge of experts of the area to perform the manual labeling. Data augmentation techniques help to improve deep learning models under the circumstance of few and imbalanced labeled samples. In this work, we propose a n… Show more

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References 36 publications
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