What’s new in Wand 0.6?¶
This guide doesn’t cover all changes in 0.6. See the full list of changes in 0.6 series.
CMYK & Gray Color Spaces Added to Numpy’s Array Interface¶
New in version 0.6.2.
When exporting pixel data into a Numpy array, Gray & CMYK color-spaces will be represented.
Note that the shape of the array only has one data channel for grayscale images.
>>> with Image(filename="rose:") as img: ... img.transform_colorspace("gray") ... print(np.array(img).shape) (46, 70, 1)
As expected, CMYK images will export 4 bytes for each color channel.
>>> with Image(filename="rose:") as img: ... img.transform_colorspace("cmyk") ... print(np.array(img).shape) (46, 70, 4)
Numpy array’s do not transport channel assignment by default, so users will be responsible for passing this information back into a raster library.
>>> with Image.form_array(my_cmyk_array, channel_map="cmyk") as img: ... img.save(filename="output.tiff")
Users expecting to keep RGBA array shapes should perform color space transformations before passing to Numpy.
>>> with Image(filename="cmyk_photo.tiff") as img: ... if img.colorspace == "cmyk": ... img.transform_colorspace("srgb") ... arr = numpy.array(img) ... arr = cv2.cvtColor(arr, cv2.COLOR_RGB2BGR)
Completed MagickWand API¶
The majority of the MagickWand API has been integrated into Wand between 0.5 & 0.6 release. Documentation referring to incomplete, or minimal integrations of the API have been updated.
Ensure to run Wand with the latest ImageMagick-7 library to take advantage of all the new methods.
Image.clahe()method. Also known as “Contrast Limited Adaptive Histogram Equalization”.
Numpy I/O Fixes¶
The original integration of Numpy’s array interface exported shape data as
( WIDTH, HEIGHT, CHANNELS ). However many other imaging libraries that work
with Numpy expect this shape data as
( ROWS, COLUMNS, CHANNELS ). Wand-0.6
adjusted the shape data to be in alignment & compatible with other libraries.
Documentation & Test Cases Ship with Source Distribution¶
The source distribution now includes Wand’s reStructuredText documentation, and pytest regression tests source files. Hopefully this will help offline users. See Running tests document for info on local testing.
Use setuptools-extra to install additional development dependencies:
pip install -U Wand[doc,test]
Several memory leaks have been addressed by reworking the
allocation & deallocation functions.
It’s still recommended to use Wand’s
with statement for proper memory-resource context:
with Image(filename='input.jpg') as img: pass
Users not using the
with statement forfeit memory deallocation over to
MagickWandTerminus() function is now only called during Python’s
atexit shutdown routine.
For “What’s New in Wand 0.5”, see previous announcements.