BuildSeg: A General Framework for the Segmentation of Buildings

Publikation: Working paperPreprintForskning

Standard

BuildSeg : A General Framework for the Segmentation of Buildings. / Li, Lei; Zhang, Tianfang; Oehmcke, Stefan; Gieseke, Fabian; Igel, Christian.

arxiv.org, 2023.

Publikation: Working paperPreprintForskning

Harvard

Li, L, Zhang, T, Oehmcke, S, Gieseke, F & Igel, C 2023 'BuildSeg: A General Framework for the Segmentation of Buildings' arxiv.org. <https://arxiv.org/abs/2301.06190>

APA

Li, L., Zhang, T., Oehmcke, S., Gieseke, F., & Igel, C. (2023). BuildSeg: A General Framework for the Segmentation of Buildings. arxiv.org. https://arxiv.org/abs/2301.06190

Vancouver

Li L, Zhang T, Oehmcke S, Gieseke F, Igel C. BuildSeg: A General Framework for the Segmentation of Buildings. arxiv.org. 2023 jan. 15.

Author

Li, Lei ; Zhang, Tianfang ; Oehmcke, Stefan ; Gieseke, Fabian ; Igel, Christian. / BuildSeg : A General Framework for the Segmentation of Buildings. arxiv.org, 2023.

Bibtex

@techreport{52090a8e4bc3418e9e4e0cdb67872217,
title = "BuildSeg: A General Framework for the Segmentation of Buildings",
abstract = " Building segmentation from aerial images and 3D laser scanning (LiDAR) is a challenging task due to the diversity of backgrounds, building textures, and image quality. While current research using different types of convolutional and transformer networks has considerably improved the performance on this task, even more accurate segmentation methods for buildings are desirable for applications such as automatic mapping. In this study, we propose a general framework termed \emph{BuildSeg} employing a generic approach that can be quickly applied to segment buildings. Different data sources were combined to increase generalization performance. The approach yields good results for different data sources as shown by experiments on high-resolution multi-spectral and LiDAR imagery of cities in Norway, Denmark and France. We applied ConvNeXt and SegFormer based models on the high resolution aerial image dataset from the MapAI-competition. The methods achieved an IOU of 0.7902 and a boundary IOU of 0.6185. We used post-processing to account for the rectangular shape of the objects. This increased the boundary IOU from 0.6185 to 0.6189. ",
keywords = "cs.CV, eess.IV",
author = "Lei Li and Tianfang Zhang and Stefan Oehmcke and Fabian Gieseke and Christian Igel",
year = "2023",
month = jan,
day = "15",
language = "Udefineret/Ukendt",
publisher = "arxiv.org",
type = "WorkingPaper",
institution = "arxiv.org",

}

RIS

TY - UNPB

T1 - BuildSeg

T2 - A General Framework for the Segmentation of Buildings

AU - Li, Lei

AU - Zhang, Tianfang

AU - Oehmcke, Stefan

AU - Gieseke, Fabian

AU - Igel, Christian

PY - 2023/1/15

Y1 - 2023/1/15

N2 - Building segmentation from aerial images and 3D laser scanning (LiDAR) is a challenging task due to the diversity of backgrounds, building textures, and image quality. While current research using different types of convolutional and transformer networks has considerably improved the performance on this task, even more accurate segmentation methods for buildings are desirable for applications such as automatic mapping. In this study, we propose a general framework termed \emph{BuildSeg} employing a generic approach that can be quickly applied to segment buildings. Different data sources were combined to increase generalization performance. The approach yields good results for different data sources as shown by experiments on high-resolution multi-spectral and LiDAR imagery of cities in Norway, Denmark and France. We applied ConvNeXt and SegFormer based models on the high resolution aerial image dataset from the MapAI-competition. The methods achieved an IOU of 0.7902 and a boundary IOU of 0.6185. We used post-processing to account for the rectangular shape of the objects. This increased the boundary IOU from 0.6185 to 0.6189.

AB - Building segmentation from aerial images and 3D laser scanning (LiDAR) is a challenging task due to the diversity of backgrounds, building textures, and image quality. While current research using different types of convolutional and transformer networks has considerably improved the performance on this task, even more accurate segmentation methods for buildings are desirable for applications such as automatic mapping. In this study, we propose a general framework termed \emph{BuildSeg} employing a generic approach that can be quickly applied to segment buildings. Different data sources were combined to increase generalization performance. The approach yields good results for different data sources as shown by experiments on high-resolution multi-spectral and LiDAR imagery of cities in Norway, Denmark and France. We applied ConvNeXt and SegFormer based models on the high resolution aerial image dataset from the MapAI-competition. The methods achieved an IOU of 0.7902 and a boundary IOU of 0.6185. We used post-processing to account for the rectangular shape of the objects. This increased the boundary IOU from 0.6185 to 0.6189.

KW - cs.CV

KW - eess.IV

M3 - Preprint

BT - BuildSeg

PB - arxiv.org

ER -

ID: 395360936