Road network extraction using multi-layered filtering and tensor voting from aerial images
Road network extraction from high-resolution aerial images is a predominant research area in remote sensing due to road network applications in various applications like transportation and industrialization disaster management. In this work, an integrated method is proposed to delineate a smooth and...
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doaj-87e417fb5afd4c44bc7b7584b8fe4b512021-02-17T04:11:13ZengElsevierEgyptian Journal of Remote Sensing and Space Sciences1110-98232021-08-01242211219Road network extraction using multi-layered filtering and tensor voting from aerial imagesPramod Kumar Soni0Navin Rajpal1Rajesh Mehta2University School of Information & Communication Technology, Guru Gobind Singh Indraprastha University Dwarka, New Delhi, India; Corresponding author.University School of Information & Communication Technology, Guru Gobind Singh Indraprastha University Dwarka, New Delhi, IndiaThapar Institute of Engineering and Technology, Patiala, Punjab, IndiaRoad network extraction from high-resolution aerial images is a predominant research area in remote sensing due to road network applications in various applications like transportation and industrialization disaster management. In this work, an integrated method is proposed to delineate a smooth and accurate road centerline from very high resolution (VHR) aerial images. The proposed approach incorporates Gabor filtering, hysteresis thresholding, road filtering using shape features, and tensor voting (TV). The initial road map is generated by detecting the road features that lie on the edges in the starting phase, using Gabor filter and hysteresis thresholding. In the next phase, the initial road map's exactitude is enhanced by removing non-road components from the initial road network using filtering based on shape features and morphological operations. Further, the Euclidean distance transform is applied for the extraction of the road centerline. The centerlines extracted by the method are broken at some places due to occlusions caused by different factors. Finally, the fractured road network is reconstructed by the TV technique. The experimental results tested on VHR aerial images demonstrate the accurate centerline extraction of high quality and higher assessable results as compared with contemporary methods.http://www.sciencedirect.com/science/article/pii/S1110982321000156Road extractionGabor filterMorphologyHysteresis-thresholdingTensor voting |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Pramod Kumar Soni Navin Rajpal Rajesh Mehta |
spellingShingle |
Pramod Kumar Soni Navin Rajpal Rajesh Mehta Road network extraction using multi-layered filtering and tensor voting from aerial images Egyptian Journal of Remote Sensing and Space Sciences Road extraction Gabor filter Morphology Hysteresis-thresholding Tensor voting |
author_facet |
Pramod Kumar Soni Navin Rajpal Rajesh Mehta |
author_sort |
Pramod Kumar Soni |
title |
Road network extraction using multi-layered filtering and tensor voting from aerial images |
title_short |
Road network extraction using multi-layered filtering and tensor voting from aerial images |
title_full |
Road network extraction using multi-layered filtering and tensor voting from aerial images |
title_fullStr |
Road network extraction using multi-layered filtering and tensor voting from aerial images |
title_full_unstemmed |
Road network extraction using multi-layered filtering and tensor voting from aerial images |
title_sort |
road network extraction using multi-layered filtering and tensor voting from aerial images |
publisher |
Elsevier |
series |
Egyptian Journal of Remote Sensing and Space Sciences |
issn |
1110-9823 |
publishDate |
2021-08-01 |
description |
Road network extraction from high-resolution aerial images is a predominant research area in remote sensing due to road network applications in various applications like transportation and industrialization disaster management. In this work, an integrated method is proposed to delineate a smooth and accurate road centerline from very high resolution (VHR) aerial images. The proposed approach incorporates Gabor filtering, hysteresis thresholding, road filtering using shape features, and tensor voting (TV). The initial road map is generated by detecting the road features that lie on the edges in the starting phase, using Gabor filter and hysteresis thresholding. In the next phase, the initial road map's exactitude is enhanced by removing non-road components from the initial road network using filtering based on shape features and morphological operations. Further, the Euclidean distance transform is applied for the extraction of the road centerline. The centerlines extracted by the method are broken at some places due to occlusions caused by different factors. Finally, the fractured road network is reconstructed by the TV technique. The experimental results tested on VHR aerial images demonstrate the accurate centerline extraction of high quality and higher assessable results as compared with contemporary methods. |
topic |
Road extraction Gabor filter Morphology Hysteresis-thresholding Tensor voting |
url |
http://www.sciencedirect.com/science/article/pii/S1110982321000156 |
work_keys_str_mv |
AT pramodkumarsoni roadnetworkextractionusingmultilayeredfilteringandtensorvotingfromaerialimages AT navinrajpal roadnetworkextractionusingmultilayeredfilteringandtensorvotingfromaerialimages AT rajeshmehta roadnetworkextractionusingmultilayeredfilteringandtensorvotingfromaerialimages |
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