Speed up coding/extending image analysis in Python.
Project description
A numpy extension for efficient and powerful image analysis workflow
impy
is an all-in-one image analysis library, equipped with parallel processing, GPU support, GUI based tools and so on.
The core array, ImgArray
, is a subclass of numpy.ndarray
, tagged with information such as
- image axes
- scale of each axis
- directory of the original image
- and other image metadata
Documentation
Documentation is available here.
Installation
- use pip
pip install impy-array
- from source
git clone https://github.com/hanjinliu/impy
Code as fast as you speak
Almost all the functions, such as filtering, deconvolution, labeling, single molecule detection, and even those pure numpy
functions, are aware of image metadata. They "know" which dimension corresponds to "z"
axis, which axes they should iterate along or where to save the image. As a result, your code will be very concise:
import impy as ip
import numpy as np
img = ip.imread("path/to/image") # Read images with metadata.
img["z=3;t=0"].imshow() # Plot image slice at z=3 and t=0.
img_fil = img.gaussian_filter(sigma=2) # Paralell batch denoising. No more for loop!
img_prj = np.max(img_fil, axis="z") # Z-projection (numpy is aware of image axes!).
img_prj.imsave(f"Max-{img.name}") # Save in the same place. Don't spend time on searching for the directory!
Supported file formats
impy
automatically chooses proper reader/writer according to the extension.
- Tiff file (".tif", ".tiff")
- MRC file (".mrc", ".rec", ".st", ".map", ".map.gz")
- Zarr file (".zarr")
- Other image file (".png", ".jpg")
Switch between CPU and GPU
impy
can internally switches the functions between numpy
and cupy
.
You can use GPU for calculation very easily.
img.gaussian_filter() # <- CPU
with ip.use("cupy"):
img.gaussian_filter() # <- GPU
ip.Const["RESOURCE"] = "cupy" # <- globally use GPU
Seamless interface between napari
napari is an interactive viewer for multi-dimensional images. impy
has a simple and efficient interface with it, via the object ip.gui
. Since ImgArray
is tagged with image metadata, you don't have to care about axes or scales. Just run
ip.gui.add(img)
Extend your function for batch processing
Already have a function for numpy
and scipy
? Decorate it with @ip.bind
@ip.bind
def imfilter(img, param=None):
# Your function here.
# Do something on a 2D or 3D image and return image, scalar or labels
return out
and it's ready for batch processing!
img.imfilter(param=1.0)
Commaind line usage
impy
also supports command line based image analysis. All method of ImgArray
is available
from commad line, such as
impy path/to/image.tif ./output.tif --method gaussian_filter --sigma 2.0
which is equivalent to
import impy as ip
img = ip.imread("path/to/image.tif")
out = img.gaussian_filter(sigma=2.0)
out.imsave("./output.tif")
For more complex procedure, it is possible to send image directly to IPython
impy path/to/image.tif -i
thr = img.gaussian_filter().threshold()
or to napari
impy path/to/image.tif -n
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