Litcius/Paper detail

Towards global scale segmentation with OpenStreetMap and remote sensing

Munazza Usmani, Maurizio Napolitano, Francesca Bovolo

2023ISPRS Open Journal of Photogrammetry and Remote Sensing13 citationsDOIOpen Access PDF

Abstract

Land Use Land Cover (LULC) segmentation is a famous application of remote sensing in an urban environment. Up-to-date and complete data are of major importance in this field. Although with some success, pixel-based segmentation remains challenging because of class variability. Due to the increasing popularity of crowd-sourcing projects, like OpenStreetMap, the need for user-generated content has also increased, providing a new prospect for LULC segmentation. We propose a deep-learning approach to segment objects in high-resolution imagery by using semantic crowdsource information. Due to satellite imagery and crowdsource database complexity, deep learning frameworks perform a significant role. This integration reduces computation and labor costs. Our methods are based on a fully convolutional neural network (CNN) that has been adapted for multi-source data processing. We discuss the use of data augmentation techniques and improvements to the training pipeline. We applied semantic (U-Net) and instance segmentation (Mask R-CNN) methods and, Mask R–CNN showed a significantly higher segmentation accuracy from both qualitative and quantitative viewpoints. The conducted methods reach 91% and 96% overall accuracy in building segmentation and 90% in road segmentation, demonstrating OSM and remote sensing complementarity and potential for city sensing applications.

Topics & Concepts

SegmentationComputer scienceConvolutional neural networkDeep learningArtificial intelligencePipeline (software)CrowdsourcingScale-space segmentationField (mathematics)Image segmentationPattern recognition (psychology)Remote sensingGeographyWorld Wide WebProgramming languageMathematicsPure mathematicsRemote-Sensing Image ClassificationAutomated Road and Building ExtractionVideo Surveillance and Tracking Methods