CTRL-C: Camera calibration TRansformer with Line-Classification

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Deep LearningCTRL-C
Overview

CTRL-C: Camera calibration TRansformer with Line-Classification

This repository contains the official code and pretrained models for CTRL-C (Camera calibration TRansformer with Line-Classification). Jinwoo Lee, Hyunsung Go, Hyunjoon Lee, Sunghyun Cho, Minhyuk Sung and Junho Kim. ICCV 2021.

Single image camera calibration is the task of estimating the camera parameters from a single input image, such as the vanishing points, focal length, and horizon line. In this work, we propose Camera calibration TRansformer with Line-Classification (CTRL-C), an end-to-end neural network-based approach to single image camera calibration, which directly estimates the camera parameters from an image and a set of line segments. Our network adopts the transformer architecture to capture the global structure of an image with multi-modal inputs in an end-to-end manner. We also propose an auxiliary task of line classification to train the network to extract the global geometric information from lines effectively. Our experiments demonstrate that CTRL-C outperforms the previous state-of-the-art methods on the Google Street View and SUN360 benchmark datasets.

Model Architecture

Results & Checkpoints

Dataset Up Dir (◦) Pitch (◦) Roll (◦) FoV (◦) AUC (%) URL
Google Street View 1.80 1.58 0.66 3.59 87.29 gdrive
SUN360 1.91 1.50 0.96 3.80 85.45 gdrive

Preparation

  1. Clone this repository

  2. Setup environments

    conda create -n ctrlc python
    conda activate ctrlc
    conda install -c pytorch torchvision
    
    pip install -r requrements.txt
    

Training Datasets

Training

  • Single GPU
python main.py --config-file 'config-files/ctrl-c.yaml' --opts OUTPUT_DIR 'logs'
  • Multi GPU
python -m torch.distributed.launch --nproc_per_node=4 --use_env main.py --config-file 'config-files/ctrl-c.yaml' --opts OUTPUT_DIR 'logs'

Evaluation

python test.py --dataset 'GoogleStreetView' --opts OUTPUT_DIR 'outputs'

Citation

If you use this code for your research, please cite our paper:

@InProceedings{Lee:2021:ICCV,
    Title     = {{CTRL-C: Camera calibration TRansformer with Line-Classification}},
    Author    = {Jinwoo Lee and Hyunsung Go and Hyunjoon Lee and Sunghyun Cho and Minhyuk Sung and Junho Kim},    
    Booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
    Year      = {2021},
}

License

CTRL-C is released under the Apache 2.0 license. Please see the LICENSE file for more information.

Acknowledgments

This code is based on the implementations of DETR: End-to-End Object Detection with Transformers.

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