Panoptic Quality (PQ) computation for binary masks.
Project description
panoptica
Computing instance-wise segmentation quality metrics for 2D and 3D semantic- and instance segmentation maps.
Features
The package provides three core modules:
- Instance Approximator: instance approximation algorithms to extract instances from semantic segmentation maps/model outputs.
- Instance Matcher: matches predicted instances with reference instances.
- Instance Evaluator: computes segmentation and detection quality metrics for pairs of predicted - and reference segmentation maps.
Installation
With a Python 3.10+ environment, you can install panoptica from pypi.org
pip install panoptica
Use cases and tutorials
For tutorials featuring various use cases, see: BrainLesion/tutorials/panoptica
Metrics
Panoptica supports a large range of metrics. An overview of the supported metrics and their formulas can be found: panoptica/metrics.md
Semantic Segmentation Input
Although an instance-wise evaluation is highly relevant and desirable for many biomedical segmentation problems, they are still addressed as semantic segmentation problems due to the lack of appropriate instance labels.
This tutorial leverages all three modules of panoptica: instance approximation, -matching and -evaluation.
Unmatched Instances Input
It is a common issue that instance segmentation outputs feature good outlines but mismatched instance labels. For this case, the matcher module can be utilized to match instances and the evaluator to report metrics.
Matched Instances Input
If your predicted instances already match the reference instances, you can directly compute metrics using the evaluator module.
Using Configs (saving and loading)
You can construct Panoptica_Evaluator (among many others) objects and save their arguments, so you can save project-specific configurations and use them later.
It uses ruamel.yaml in a readable way.
Citation
If you use panoptica in your research, please cite it to support the development!
Kofler, F., Möller, H., Buchner, J. A., de la Rosa, E., Ezhov, I., Rosier, M., Mekki, I., Shit, S., Negwer, M., Al-Maskari, R., Ertürk, A., Vinayahalingam, S., Isensee, F., Pati, S., Rueckert, D., Kirschke, J. S., Ehrlich, S. K., Reinke, A., Menze, B., Wiestler, B., & Piraud, M. (2023). Panoptica -- instance-wise evaluation of 3D semantic and instance segmentation maps. arXiv preprint arXiv:2312.02608.
@misc{kofler2023panoptica,
title={Panoptica -- instance-wise evaluation of 3D semantic and instance segmentation maps},
author={Florian Kofler and Hendrik Möller and Josef A. Buchner and Ezequiel de la Rosa and Ivan Ezhov and Marcel Rosier and Isra Mekki and Suprosanna Shit and Moritz Negwer and Rami Al-Maskari and Ali Ertürk and Shankeeth Vinayahalingam and Fabian Isensee and Sarthak Pati and Daniel Rueckert and Jan S. Kirschke and Stefan K. Ehrlich and Annika Reinke and Bjoern Menze and Benedikt Wiestler and Marie Piraud},
year={2023},
eprint={2312.02608},
archivePrefix={arXiv},
primaryClass={cs.CV}
}
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