Flood filling masking tool.
Displays an image with a tolerance trackbar. A user can click anywhere on the image to seed a selection, where the range of allowable deviation from a color is given by the trackbar value. The mean and standard deviation of the selected region is displayed in the window's status bar.
Install into a Python virtual environment, as you would any other Python project.
$ python3 -m venv venv
$ source venv/bin/activate
(venv) $ pip install git+https://github.com/alkasm/magicwand
Run the module as a script on any image you want:
(venv) $ python3 -m magicwand path/to/image.png
As a script, just run the module directly as above. You can always check the --help
flag when running the module as a script for more info:
(venv) $ python3 -m magicwand --help
usage: magic wand selector [-h] image
positional arguments:
image path to image
optional arguments:
-h, --help show this help message and exit
Use inside your own Python projects:
>>> from magicwand import SelectionWindow
>>> import cv2 as cv
>>>
>>> img = cv.imread("lane.jpg")
>>> window = SelectionWindow(img)
>>> window.show()
>>>
>>> print(f"Selection mean: {window.mean[:, 0]}.")
Selection mean: [106.76420172 93.78792503 89.71121334].
The window object has a few properties you might be interested in after successfully filtering your image:
>>> window.mean # average value for each channel - from cv.meanStdDev(img, mask)
>>> window.stddev # standard deviation for each channel - from cv.meanStdDev(img, mask)
>>> window.mask # mask from cv.floodFill()
>>> window.img # image input into the window
>>> window.seed # most recent seed point for cv.floodFill()