Home > Research > Publications & Outputs > ME-Net

Electronic data

  • remotesensing-13-03826-manuscript

    Accepted author manuscript, 58.8 MB, Word document

    Available under license: CC BY: Creative Commons Attribution 4.0 International License

Links

Text available via DOI:

View graph of relations

ME-Net: A Multi-Scale Erosion Network for Crisp Building Edge Detection from Very High Resolution Remote Sensing Imagery

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Published

Standard

ME-Net: A Multi-Scale Erosion Network for Crisp Building Edge Detection from Very High Resolution Remote Sensing Imagery. / Wen, Xiang; Li, Xing; Zhang, Ce et al.
In: Remote Sensing, Vol. 13, No. 19, 3826, 24.09.2021, p. 1-24.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

APA

Vancouver

Wen X, Li X, Zhang C, Han W, Li E, Liu W et al. ME-Net: A Multi-Scale Erosion Network for Crisp Building Edge Detection from Very High Resolution Remote Sensing Imagery. Remote Sensing. 2021 Sept 24;13(19):1-24. 3826. doi: 10.3390/rs13193826

Author

Bibtex

@article{9fddb1b7c91d4b2b8587b8d56296258d,
title = "ME-Net: A Multi-Scale Erosion Network for Crisp Building Edge Detection from Very High Resolution Remote Sensing Imagery",
abstract = "The detection of building edges from very high resolution (VHR) remote sensing imagery is essential to various geo-related applications, including surveying and mapping, urban management, etc. Recently, the rapid development of deep convolutional neural networks (DCNNs) has achieved remarkable progress in edge detection; however, there has always been the problem of edge thickness due to the large receptive field of DCNNs. In this paper, we proposed a multi-scale erosion network (ME-Net) for building edge detection to crisp the building edge through two innovative approaches: (1) embedding an erosion module (EM) in the network to crisp the edge and (2) adding the Dice coefficient and local cross entropy of edge neighbors into the loss function to increase its sensitivity to the receptive field. In addition, a new metric, Ene, to measure the crispness of the predicted building edge was proposed. The experiment results show that ME-Net not only detects the clearest and crispest building edges, but also achieves the best OA of 98.75%, 95.00% and 95.51% on three building edge datasets, and exceeds other edge detection networks 3.17% and 0.44% at least in strict F1-score and Ene. In a word, the proposed ME-Net is an effective and practical approach for detecting crisp building edges from VHR remote sensing imagery.",
keywords = "building edge detection, deep convolutional neural network, erosion module, very high resolution remote sensing imagery",
author = "Xiang Wen and Xing Li and Ce Zhang and Wenquan Han and Erzhu Li and Wei Liu and Lianpeng Zhang",
year = "2021",
month = sep,
day = "24",
doi = "10.3390/rs13193826",
language = "English",
volume = "13",
pages = "1--24",
journal = "Remote Sensing",
issn = "2072-4292",
publisher = "MDPI AG",
number = "19",

}

RIS

TY - JOUR

T1 - ME-Net

T2 - A Multi-Scale Erosion Network for Crisp Building Edge Detection from Very High Resolution Remote Sensing Imagery

AU - Wen, Xiang

AU - Li, Xing

AU - Zhang, Ce

AU - Han, Wenquan

AU - Li, Erzhu

AU - Liu, Wei

AU - Zhang, Lianpeng

PY - 2021/9/24

Y1 - 2021/9/24

N2 - The detection of building edges from very high resolution (VHR) remote sensing imagery is essential to various geo-related applications, including surveying and mapping, urban management, etc. Recently, the rapid development of deep convolutional neural networks (DCNNs) has achieved remarkable progress in edge detection; however, there has always been the problem of edge thickness due to the large receptive field of DCNNs. In this paper, we proposed a multi-scale erosion network (ME-Net) for building edge detection to crisp the building edge through two innovative approaches: (1) embedding an erosion module (EM) in the network to crisp the edge and (2) adding the Dice coefficient and local cross entropy of edge neighbors into the loss function to increase its sensitivity to the receptive field. In addition, a new metric, Ene, to measure the crispness of the predicted building edge was proposed. The experiment results show that ME-Net not only detects the clearest and crispest building edges, but also achieves the best OA of 98.75%, 95.00% and 95.51% on three building edge datasets, and exceeds other edge detection networks 3.17% and 0.44% at least in strict F1-score and Ene. In a word, the proposed ME-Net is an effective and practical approach for detecting crisp building edges from VHR remote sensing imagery.

AB - The detection of building edges from very high resolution (VHR) remote sensing imagery is essential to various geo-related applications, including surveying and mapping, urban management, etc. Recently, the rapid development of deep convolutional neural networks (DCNNs) has achieved remarkable progress in edge detection; however, there has always been the problem of edge thickness due to the large receptive field of DCNNs. In this paper, we proposed a multi-scale erosion network (ME-Net) for building edge detection to crisp the building edge through two innovative approaches: (1) embedding an erosion module (EM) in the network to crisp the edge and (2) adding the Dice coefficient and local cross entropy of edge neighbors into the loss function to increase its sensitivity to the receptive field. In addition, a new metric, Ene, to measure the crispness of the predicted building edge was proposed. The experiment results show that ME-Net not only detects the clearest and crispest building edges, but also achieves the best OA of 98.75%, 95.00% and 95.51% on three building edge datasets, and exceeds other edge detection networks 3.17% and 0.44% at least in strict F1-score and Ene. In a word, the proposed ME-Net is an effective and practical approach for detecting crisp building edges from VHR remote sensing imagery.

KW - building edge detection

KW - deep convolutional neural network

KW - erosion module

KW - very high resolution remote sensing imagery

U2 - 10.3390/rs13193826

DO - 10.3390/rs13193826

M3 - Journal article

VL - 13

SP - 1

EP - 24

JO - Remote Sensing

JF - Remote Sensing

SN - 2072-4292

IS - 19

M1 - 3826

ER -