Caer is a lightweight, high-performance Vision library for high-performance AI research. We wrote this framework to simplify your approach towards Computer Vision by abstracting away unnecessary boilerplate code giving you the flexibility to quickly prototype deep learning models and research ideas. The end result is a library quite different in its design, that’s easy to understand, plays well with others, and is a lot of fun to use.
Our elegant, type-checked API and design philosophy makes Caer ideal for students, researchers, hobbyists and even experts in the fields of Deep Learning and Computer Vision.
Caer is a Python library that consists of the following components:
Component | Description |
---|---|
caer | A lightweight GPU-accelerated Computer Vision library for high-performance AI research |
caer.color | Colorspace operations |
caer.data | Standard high-quality test images and example data |
caer.path | OS-specific path manipulations |
caer.preprocessing | Image preprocessing utilities. |
caer.transforms | Powerful image transformations and augmentations |
caer.video | Video processing utilities |
Usually, Caer is used either as:
- a replacement for OpenCV to use the power of GPUs.
- a Computer Vision research platform that provides maximum flexibility and speed.
See the Caer Installation guide for detailed installation instructions (including building from source).
Currently, caer
supports releases of Python 3.6 onwards; Python 2 is not supported (nor recommended).
To install the current release:
$ pip install --upgrade caer
import caer
# Load a standard 640x427 test image that ships out-of-the-box with caer
sunrise = caer.data.sunrise(rgb=True)
# Resize the image to 400x400 while MAINTAINING aspect ratio
resized = caer.resize(sunrise, target_size=(400,400), preserve_aspect_ratio=True)
For more examples, see the Caer demos or Read the documentation
We appreciate all contributions, feedback and issues. If you plan to contribute new features, utility functions, or extensions to the core, please go through our Contribution Guidelines.
To contribute, start working through the caer
codebase, read the Documentation, navigate to the Issues tab and start looking through interesting issues.
Current contributors can be viewed either from the Contributors file or by using the caer.__contributors__
command.
If you have any questions, please:
- Read the docs.
- Look it up in our Github Discussions (or add a new question).
- Search through the issues.
Caer is open-source and released under the MIT License.
If you want to cite the framework feel free to use this (but only if you loved it 😊):
@article{jasmcaus,
title={Caer},
author={Dsouza, Jason},
journal={GitHub. Note: https://github.com/jasmcaus/caer},
volume={2},
year={2020-2021}
}