The evaluation component of the sci-annot framework
Project description
Sci-Annot Evaluation Component
This package was developed as part of my master's thesis and used in the evaluation stage.
It produces per-page confusion matrices with multiple classes for predictions in the field of Object Detection, with inter-object dependencies also supported.
Installation
This tool is packaged under the name sci-annot-eval.
You can install it like pip install sci-annot-eval
, or conda install sci-annot-eval
.
Development Setup
If you wish to work on this project locally, you'll need:
- python3.9+
- pipenv
To set up the dependencies, just run pipenv install
in the project root.
From that point on, you can do pipenv shell
, which will launch your custom python environment with all of the dependencies installed.
TODO
Fix logging
Project details
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