Road Network Detection from Aerial Imagery of Urban Areas Using Deep ResUNet in Combination with the B-snake Algorithm

被引:0
|
作者
Hafiz Suliman Munawar
Ahmed W. A. Hammad
S. Travis Waller
Danish Shahzad
Md. Rafiqul Islam
机构
[1] University of New South Wales,School of the Built Environment
[2] Technische Universität Dresden,Lighthouse Professor and Chair of Transport Modelling and Simulation “Friedrich List” Faculty of Transport and Traffic Sciences
[3] University of Saarland,Department of Visual Computing
[4] University of Technology Sydney (UTS),Data Science Institute (DSI)
来源
Human-Centric Intelligent Systems | 2023年 / 3卷 / 1期
关键词
Deep ResUnet; Region merging; Object-based image analysis (OBIA); B-snake; Road network extraction;
D O I
10.1007/s44230-023-00015-5
中图分类号
学科分类号
摘要
Road network detection is critical to enhance disaster response and detecting a safe evacuation route. Due to expanding computational capacity, road extraction from aerial imagery has been investigated extensively in the literature, specifically in the last decade. Previous studies have mainly proposed methods based on pixel classification or image segmentation as road/non-road images, such as thresholding, edge-based segmentation, k-means clustering, histogram-based segmentation, etc. However, these methods have limitations of over-segmentation, sensitivity to noise, and distortion in images. This study considers the case study of Hawkesbury Nepean valley, NSW, Australia, which is prone to flood and has been selected for road network extraction. For road area extraction, the application of semantic segmentation along with residual learning and U-Net is suggested. Public road datasets were used for training and testing purposes. The study suggested a framework to train and test datasets with the application of the deep ResUnet architecture. Based on maximal similarity, the regions were merged, and the road network was extracted with the B-snake algorithm application. The proposed framework (baseline + region merging + B-snake) improved performance when evaluated on the synthetically modified dataset. It was evident that in comparison with the baseline, region merging and addition of the B-snake algorithm improved significantly, achieving a value of 0.92 for precision and 0.897 for recall.
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页码:37 / 46
页数:9
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