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Demonstraton of juncton-line graph representaton G={V, E}. (a) an sample image patch with 10 junctons (V); (b) the graph which describes the connectvity of all junctons (G); (c) the adjacency matrix of all junctons (E, black means the junction pair is connected).
Requirements
Python >= 3.6
fire >= 0.1.3
numba >= 0.40.0
numpy >= 1.14.5
pytorch = 0.4.1
scikit-learn = 0.19.2
scipy = 1.1.0
tensorboard >= 1.11.0
tensorboardX >= 1.4
torchvision >= 0.2.1
OpenCV >= 3.4.3
Usage
clone this repository (and make sure you fetch all .pth files right with git-lfs): git clone https://github.com/svip-lab/PPGNet.git
download the preprocessed SIST-Wireframe dataset from BaiduPan (code:lnfp) or Google Drive.
specify the dataset path in the train.sh script. (modify the --data-root parameter)
run train.sh.
Please note that the code requires the GPU memory to be at least 24GB. For GPU with memory smaller than 24GB, you can use a smaller batch with --batch-size parameter and/or change the --block-inference-size parameter in train.sh to be a smaller integer to avoid the out-of-memory error.
Citation
Please cite our paper for any purpose of usage.
@inproceedings{zhang2019ppgnet,
title={PPGNet: Learning Point-Pair Graph for Line Segment Detection},
author={Ziheng Zhang and Zhengxin Li and Ning Bi and Jia Zheng and Jinlei Wang and Kun Huang and Weixin Luo and Yanyu Xu and Shenghua Gao},
booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
year={2019}
}
About
Source code for our CVPR 2019 paper - PPGNet: Learning Point-Pair Graph for Line Segment Detection