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Global Collinearity-Aware Polygonizer for Polygonal Building Mapping in Remote Sensing

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Link to Profile Xiaoxiang Zhu PI Matchmaking

Xiaoxiang Zhu

Prof. Dr.

Principal Investigator

Abstract

This article addresses the challenge of mapping polygonal buildings from remote sensing images and introduces a novel algorithm, the global collinearity-aware polygonizer (GCP). GCP, built upon an instance segmentation framework, processes binary masks produced by any instance segmentation model. The algorithm begins by collecting polylines sampled along the contours of the binary masks. These polylines undergo a refinement process using a Transformer-based regression module to ensure they accurately fit the contours of the targeted building instances. Subsequently, a collinearity-aware polygon simplification module simplifies these refined polylines and generates the final polygon representation. This module employs a dynamic programming technique to optimize an objective function that balances the simplicity and fidelity of the polygons, achieving globally optimal solutions. Furthermore, the optimized collinearity-aware objective is seamlessly integrated into network training, enhancing the cohesiveness of the entire pipeline. The effectiveness of GCP has been validated on three public benchmarks for polygonal building mapping. Further experiments reveal that applying the collinearity-aware polygon simplification module to arbitrary polylines, without prior knowledge, enhances accuracy over traditional methods such as the Douglas–Peucker (DP) algorithm. This finding underscores the broad applicability of GCP.

article ZSZ25


IEEE Transactions on Geoscience and Remote Sensing

63. Sep. 2025.
Top Journal

Authors

F. Zhang • Y. Shi • X. Zhu

Links

DOI GitHub

Research Area

 C3 | Physics and Geo Sciences

BibTeXKey: ZSZ25

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