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Learning to Parse Wireframes in Images of Man-Made Environments

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In this paper, we propose a learning-based approach to the task of automatically extracting a "wireframe" representation for images of cluttered man-made environments. The wireframe (see Fig. 1) contains all salient straight lines and their junctions of the scene that encode efficiently and accurately large-scale geometry and object shapes. To this end, we have built a very large new dataset of over 5,000 images with wireframes thoroughly labelled by humans. We have proposed two convolutional neural networks that are suitable for extracting junctions and lines with large spatial support, respectively. The networks trained on our dataset have achieved significantly better performance than state-of-the-art methods for junction detection and line segment detection, respectively. We have conducted extensive experiments to evaluate quantitatively and qualitatively the wireframes obtained by our method, and have convincingly shown that effectively and efficiently parsing wireframes for images of man-made environments is a feasible goal within reach. Such wireframes could benefit many important visual tasks such as feature correspondence, 3D reconstruction, vision-based mapping, localization, and navigation. The data and source code are available at https://github.com/huangkuns/wireframe.

Kun Huang, Yifan Wang, Zihan Zhou, Tianjiao Ding, Shenghua Gao, Yi Ma• 2020

Related benchmarks

TaskDatasetResultRank
Line Segment DetectionYorkUrban (test)
sAP (10px)2.1
39
Line Segment DetectionWireframe dataset (test)
sAP^{10}5.1
34
Line Segment DetectionYorkUrban
sAP52.8
33
Line Segment DetectionWireframe
sAP50.037
18
Line Segment DetectionShanghaiTech v1.0 (test)
sAP53.7
15
Wireframe ParsingWireframe v1 (test)
sAP56.9
14
Wireframe ParsingYorkUrban v1 (test)
sAP52.8
14
Line Segment DetectionWireframe Dataset
sAP@106.8
6
Line Segment DetectionYorkUrban Dataset
sAP@102.7
6
Wireframe DetectionYork Urban (test)
APH53.4
4
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