MARVAir: Meteorology Augmented Residual-Based Visual Approach for Crowdsourcing Air Quality Inference
unlike many works that use PyTorch as their backend, this project is implemented using TensorFlow 2.x.
the contributor of the code: Muyan Yao
Our implementation of MARVAir: Meteorology Augmented Residual-Based Visual Approach for Crowdsourcing Air Quality Inference.
- This repository includes the implementation of the whole deep learning network described in the aforementioned paper.
- Should you have any concerns, feel free contact with me directly at muyanyao \at ieee.org
If you use MARVAir in your project or research, fully or partially, please cite the following paper:
> M. Yao, D. Tao, J. Wang, R. Gao and K. Sun, <br/>
> "MARVAir: Meteorology Augmented Residual-Based Visual Approach for Crowdsourcing Air Quality Inference," <br/>
> in IEEE Transactions on Instrumentation and Measurement, vol. 71, pp. 1-10, 2022, Art no. 2514310, doi: 10.1109/TIM.2022.3193197. <br/>
```bibtex
@ARTICLE{9837081,
author={Yao, Muyan and Tao, Dan and Wang, Jiangtao and Gao, Ruipeng and Sun, Kunning},
journal={IEEE Transactions on Instrumentation and Measurement},
title={MARVAir: Meteorology Augmented Residual-Based Visual Approach for Crowdsourcing Air Quality Inference},
year={2022},
volume={71},
number={},
pages={1-10},
doi={10.1109/TIM.2022.3193197}}
The following dependency is required to have this project working normally:
- conda (anaconda, miniconda, or other variants)
- CUDA (if GPU based acceleration is preferred. despite the theoretical possibility, this code is not tested with ROCm)
The python environment required for this project can be easily installed through:
conda env create -f marvair.yaml
due to copyright concerns, the package of opencv has not been included in the environment description file. please install it manually before you dig into the code.
Have a nice day!