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LabelRS: An Automated Toolbox to Make Deep Learning Samples from Remote Sensing Images

Junjie Li, Lingkui Meng, Beibei Yang, Chongxin Tao, Linyi Li, Wen Zhang

2021Remote Sensing18 citationsDOIOpen Access PDF

Abstract

Deep learning technology has achieved great success in the field of remote sensing processing. However, the lack of tools for making deep learning samples with remote sensing images is a problem, so researchers have to rely on a small amount of existing public data sets that may influence the learning effect. Therefore, we developed an add-in (LabelRS) based on ArcGIS to help researchers make their own deep learning samples in a simple way. In this work, we proposed a feature merging strategy that enables LabelRS to automatically adapt to both sparsely distributed and densely distributed scenarios. LabelRS solves the problem of size diversity of the targets in remote sensing images through sliding windows. We have designed and built in multiple band stretching, image resampling, and gray level transformation algorithms for LabelRS to deal with the high spectral remote sensing images. In addition, the attached geographic information helps to achieve seamless conversion between natural samples, and geographic samples. To evaluate the reliability of LabelRS, we used its three sub-tools to make semantic segmentation, object detection and image classification samples, respectively. The experimental results show that LabelRS can produce deep learning samples with remote sensing images automatically and efficiently.

Topics & Concepts

Computer scienceDeep learningToolboxArtificial intelligenceRemote sensingSegmentationField (mathematics)Remote sensing applicationHyperspectral imagingComputer visionProgramming languageGeologyMathematicsPure mathematicsRemote-Sensing Image ClassificationAdvanced Image and Video Retrieval TechniquesAutomated Road and Building Extraction