An AprilTags wrapper with camera discovery and axis conversion.
Project description
april_vision
A fiducial marker system used by Student Robotics. Uses april tag markers to provide detection, pose and distance estimation for these markers.
Installation
This library requires OpenCV but the default installation does not install OpenCV. There are a few different versions of OpenCV with different install sizes, to install the default package without OpenCV, run the following command.
pip install april-vision
To install the lightweight headless version OpenCV install the library with the following command.
pip install april-vision[opencv]
If you want to perform some of the more advanced features of the CLI (live view of the camera) you need the full version of OpenCV, which can be installed with the following command.
pip install april-vision[cli]
If you need to run the calibration feature in the CLI you will need to install the opencv-contrib-python
module. All the versions of OpenCV clash so you should only have one installed.
Example
from april_vision.examples.camera import setup_cameras
# Markers 0-100 are 80mm in size
tag_sizes = {
range(0, 100): 80
}
# Returns a dict of index and camera
cameras = setup_cameras(tag_sizes)
if len(cameras) == 0:
print("No cameras found")
for name, cam in cameras.items():
print(name)
print(cam.see())
Tools
When installed april_vision can be used on the command line providing the following list of useful tools. Each of the tools contain help text on correct usage accessed via the -h
argument.
annotate_image
annotate_video
calibrate
live
marker_generator
vision_debug
tools
family_details
list_cameras
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Hashes for april_vision-2.0.0-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | c8f785673d472e114b852ad5f66e27d6a0e970b59913686f557a8c85d810c053 |
|
MD5 | 579fddd87be54802dd7bf4bff0426b28 |
|
BLAKE2b-256 | 67c4be273daa0a77d6d3fa7ea0f8b55abff120e844117759ceab37efc2cadc12 |