HPix: Generating Vector Maps from Satellite Images
Aditya Taparia, Keshab Nath

TL;DR
HPix is a novel GAN-based method that automatically generates accurate vector maps from satellite images, addressing limitations of manual and rule-based techniques.
Contribution
The paper introduces HPix, a hierarchical GAN framework for automated vector map generation from satellite imagery, a less explored area in remote sensing.
Findings
Produces highly accurate vector tile maps from satellite images
Effectively maps road intersections and building footprints clusters
Demonstrates superior performance over traditional methods
Abstract
Vector maps find widespread utility across diverse domains due to their capacity to not only store but also represent discrete data boundaries such as building footprints, disaster impact analysis, digitization, urban planning, location points, transport links, and more. Although extensive research exists on identifying building footprints and road types from satellite imagery, the generation of vector maps from such imagery remains an area with limited exploration. Furthermore, conventional map generation techniques rely on labor-intensive manual feature extraction or rule-based approaches, which impose inherent limitations. To surmount these limitations, we propose a novel method called HPix, which utilizes modified Generative Adversarial Networks (GANs) to generate vector tile map from satellite images. HPix incorporates two hierarchical frameworks: one operating at the global level…
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Taxonomy
TopicsSatellite Image Processing and Photogrammetry · Image Retrieval and Classification Techniques · Advanced Computational Techniques and Applications
