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Hauptverfasser: Yang, Liping, Driscol, Joshua, Gong, Ming, Slack, Katie, Zhang, Wenbin, Wang, Shujie, Potts, Catherine G.
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2403.18038
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author Yang, Liping
Driscol, Joshua
Gong, Ming
Slack, Katie
Zhang, Wenbin
Wang, Shujie
Potts, Catherine G.
author_facet Yang, Liping
Driscol, Joshua
Gong, Ming
Slack, Katie
Zhang, Wenbin
Wang, Shujie
Potts, Catherine G.
contents Line detection is a classic and essential problem in image processing, computer vision and machine intelligence. Line detection has many important applications, including image vectorization (e.g., document recognition and art design), indoor mapping, and important societal challenges (e.g., sea ice fracture line extraction from satellite imagery). Many line detection algorithms and methods have been developed, but robust and intuitive methods are still lacking. In this paper, we proposed and implemented a topological graph-guided algorithm, named TGGLinesPlus, for line detection. Our experiments on images from a wide range of domains have demonstrated the flexibility of our TGGLinesPlus algorithm. We benchmarked our algorithm with five classic and state-of-the-art line detection methods and evaluated the benchmark results qualitatively and quantitatively, the results demonstrate the robustness of TGGLinesPlus.
format Preprint
id arxiv_https___arxiv_org_abs_2403_18038
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle TGGLinesPlus: A robust topological graph-guided computer vision algorithm for line detection from images
Yang, Liping
Driscol, Joshua
Gong, Ming
Slack, Katie
Zhang, Wenbin
Wang, Shujie
Potts, Catherine G.
Computer Vision and Pattern Recognition
Line detection is a classic and essential problem in image processing, computer vision and machine intelligence. Line detection has many important applications, including image vectorization (e.g., document recognition and art design), indoor mapping, and important societal challenges (e.g., sea ice fracture line extraction from satellite imagery). Many line detection algorithms and methods have been developed, but robust and intuitive methods are still lacking. In this paper, we proposed and implemented a topological graph-guided algorithm, named TGGLinesPlus, for line detection. Our experiments on images from a wide range of domains have demonstrated the flexibility of our TGGLinesPlus algorithm. We benchmarked our algorithm with five classic and state-of-the-art line detection methods and evaluated the benchmark results qualitatively and quantitatively, the results demonstrate the robustness of TGGLinesPlus.
title TGGLinesPlus: A robust topological graph-guided computer vision algorithm for line detection from images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2403.18038