Skip to content

Latest commit

 

History

History
62 lines (39 loc) · 3.09 KB

README.md

File metadata and controls

62 lines (39 loc) · 3.09 KB

iquaflow
An image quality framework

iquaflow is an image quality framework that aims at providing a set of tools to assess image quality. One of the main contributions of this framework is that it allows to measure quality by using the performance of AI models trained on the images as a proxy. The framework includes ready-to-use metrics such as SNR, MTF, FWHM or RER. It also includes modifiers to alter images (noise, blur, jpeg compression, quantization, etc). In both cases, metrics and modifiers, it is easy to implement new ones. Additionally, we include dataset preparation, sanity check and all other necessary tools to carry out new experiments.

Usage examples and a detailed description of our framework can be found within our documentation on Read the Docs.

Use cases

Cookiecutter use case

Mnist use case

Single image super-resolution use case

Multi-frame super-resolution use case

Oriented-object detection with compression use case

Object detection with compression use case

Airplane detection use case

(QMRNet) Metric Regression on EO datasets use case

(QMRNet) Metric Regression for single image super-resolution use case

(QMRNet) Metric Regression for super-resolution optimization use case

Installation

You can install iquaflow using pip:

pip install iquaflow 

Read more complete installation instructions at our documentation.

iquaflow is a pure Python library, and therefore should work on Linux, OS X and Windows provided that you can install its dependencies. If you find any problem, please open an issue and we will take care of it.

Citation

If you use this library in your research, please consider citing:

@article{Iquaflow,
  author={Gallés, Pau and Takáts, Katalin and Hernández-Cabronero, Miguel and Berga, David and Pega, Luciano and Riordan-Chen, Laura and Garcia, Clara and Becker, Guillermo and Garriga, Adan and Bukva, Anica and Serra-Sagristà, Joan and Vilaseca, David and Marín, Javier},
  journal={IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing}, 
  title={A New Framework for Evaluating Image Quality Including Deep Learning Task Performances as a Proxy}, 
  year={2024},
  volume={17},
  number={},
  pages={3285-3296},
  doi={10.1109/JSTARS.2023.3342475}}

Support

For any questions or suggestions you can use the issues section or reach us at iquaflow@satellogic.com.