JOURNAL ARTICLE

A Comparative Study of Deep Learning Methods for Automated Road Network Extraction from High-Spatial-Resolution Remotely Sensed Imagery

Haochen ZhouHongjie HeLinlin XuLingfei MaDedong ZhangNan ChenMichael A. ChapmanJonathan Li

Year: 2025 Journal:   Photogrammetric Engineering & Remote Sensing Vol: 91 (3)Pages: 163-174   Publisher: American Society for Photogrammetry and Remote Sensing

Abstract

Road network data are crucial for various applications, such as road network planning, traffic control, map navigation, autonomous driving, and smart city construction. Automated road network extraction from high-spatial-resolution remotely sensed imagery has shown promise in road network data construction. In recent years, the advent of deep learning algorithms has pushed road network extraction towards auto - mation, achieving very high accuracy. However, the latest deep learning models are often less applied in the field of road network extraction and lack comparative experiments for guidance. Therefore, this research selected three recent deep learning algorithms, including dense prediction transformer (DPT), SegFormer, SEgmentation TRansformer (SETR), and the classic model fully convolutional network-8s (FCN-8s) for a comparative study. Additionally, this research paper compares three different decoder structures within the SETR model (SETR_naive, SETR_mla, SETR_pup) to investigate the effect of different decoders on the road network extraction task. The experiment is conducted on three commonly used datasets: the DeepGlobe Dataset, the Massachusetts Dataset, and Road Datasets in Complex Mountain Environments (RDCME). The DPT model outperforms other models on the Massachusetts dataset with superior reliability, achieving a high accuracy of 96.31% and excelling with a precision of 81.78% and recall of 32.50%, leading to an F1 score of 46.51%. While SegFormer has a slightly higher F1 score, DPT's precision is particularly valuable for minimizing false positives, making it the most balanced and reliable choice. Similarly, for the DeepGlobe Dataset, DPT achieves an accuracy of 96.76%, precision of 66.12%, recall of 41.37%, and F1 score of 50.89%, and for RDCME, DPT achieves an accuracy of 98.94%, precision of 99.07%, recall of 99.84%, and F1 score of 99.46%, confirming its consistent performance across datasets. This paper provides valuable guidance for future studies on road network extraction techniques using deep learning algorithms.

Keywords:
Computer science Deep learning Remote sensing Artificial intelligence High resolution Aerial imagery Extraction (chemistry) Cartography Computer vision Geography

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Citation History

Topics

Automated Road and Building Extraction
Physical Sciences →  Engineering →  Ocean Engineering
Remote Sensing and LiDAR Applications
Physical Sciences →  Environmental Science →  Environmental Engineering
Remote-Sensing Image Classification
Physical Sciences →  Engineering →  Media Technology

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