Metadata-Version: 2.1
Name: stackview
Version: 0.4.0
Summary: Interactive image stack viewing in jupyter notebooks
Home-page: https://github.com/haesleinhuepf/stackview/
Author: Robert Haase
Author-email: robert.haase@tu-dresden.de
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: BSD License
Classifier: Operating System :: OS Independent
Classifier: Intended Audience :: Science/Research
Classifier: Development Status :: 3 - Alpha
Requires-Python: >=3.6
Description-Content-Type: text/markdown
License-File: LICENSE

# stackview ðŸ§ŠðŸ‘€
Interactive image stack viewing in jupyter notebooks based on 
[ipycanvas](https://ipycanvas.readthedocs.io/) and 
[ipywidgets](https://ipywidgets.readthedocs.io/en/latest/). 
TL;DR:
```python
stackview.curtain(image, labels, continuous_update=True)
```
![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/banner2.gif)

## Installation

stackview can be installed using conda or pip.

```
conda install -c conda-forge stackview
```

OR

```
pip install stackview
```

If you run the installation from within a notebook, you need to restart Jupyter (not just the kernel), before you can use stackview.

## Usage
You can use `stackview` from within jupyter notebooks as shown below.
Also check out the demo in [![Binder](https://mybinder.org/badge_logo.svg)](https://mybinder.org/v2/gh/haesleinhuepf/stackview/HEAD?filepath=docs%2Fdemo.ipynb)

There is also a notebook demonstrating [how to use stackview in Google Colab](https://colab.research.google.com/github/haesleinhuepf/stackview/blob/master/docs/colab_clesperanto_demo.ipynb).

More example notebooks can be found in [this folder](https://github.com/haesleinhuepf/stackview/tree/main/docs).

Starting point is a 3D image dataset provided as numpy array. 
```python
from skimage.io import imread
image = imread('data/Haase_MRT_tfl3d1.tif', plugin='tifffile')
```

### Slice view

You can then view it slice-by-slice:
```python
import stackview
stackview.slice(image, continuous_update=True)
```
![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_slice.gif)

### Static insight views

The `insight` function turns a numpy-array into a numpy-compatible array that has an image-display in jupyter notebooks.

```python
insight(image[60])
```

![img.png](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/insight_demo.png)

Images of 32-bit and 64-bit type integer are displayed as labels. 

```python
blobs = imread('data/blobs.tif')
labels = label(blobs > 120)

insight(labels)
```

![img.png](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/labels_demo.png)

### Annotate regions

To create label images interactively, e.g. for machine learning training, the `stackview.annotate` function offers basic label drawing tools. 
Click and drag for drawing. Hold the `ALT` key for erasing.
Annotations are drawn into a `labels` image you need to create before drawing.

```python
import numpy as np
labels = np.zeros(image.shape).astype(np.uint32)

stackview.annotate(image, labels)
```

![img.png](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_annotate.gif)

Note: In case the interface is slow, consider using smaller images, e.g. by cropping or resampling.

### Pick intensities

To read the intensity of pixels where the mouse is moving, use the picker.
```python
stackview.picker(image, continuous_update=True)
```
![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_picker.gif)

### Orthogonal view

Orthogonal views are also available:
```python
stackview.orthogonal(image, continuous_update=True)
```
![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_orthogonal.gif)

### Curtain

Furthermore, to visualize an original image in combination with a processed version, a curtain view may be helpful:
```python
stackview.curtain(image, modified_image * 65537, continuous_update=True)
```
![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_curtain.gif)

The curtain also works with 2D data. 
Btw. to visualize both images properly, you need adjust their grey value range yourself. 
For example, multiply a binary image with 255 so that it visualizes nicely side-by-side with the original image in 8-bit range:
```python
binary = (slice_image > threshold_otsu(slice_image)) * 255
stackview.curtain(slice_image, binary, continuous_update=True)
```
![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_curtain2.gif)

The same also works with label images
```python
from skimage.measure import label
labels = label(binary)
stackview.curtain(slice_image, labels, continuous_update=True)
```

![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_curtain3.gif)

### Side-by-side view

A side-by-side view for colocalization visualization is also available.
If you're working with time-lapse data, you can also use this view for visualizing differences between timepoints:
```python
stackview.side_by_side(image_stack[1:], image_stack[:-1], continuous_update=True, display_width=300)
```
![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_side_by_side.gif)

### Interact

Exploration of the parameter space of image processing functions is available using `interact`:
```python
from skimage.filters.rank import maximum
stackview.interact(maximum, slice_image)
```
![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_interact1.gif)

This might be useful for custom functions implementing image processing workflows:
```python
from skimage.filters import gaussian, threshold_otsu, sobel
def my_custom_code(image, sigma:float = 1, show_labels: bool = True):
    sigma = abs(sigma)
    blurred_image = gaussian(image, sigma=sigma)
    binary_image = blurred_image > threshold_otsu(blurred_image)
    edge_image = sobel(binary_image)
    
    if show_labels:
        return label(binary_image)
    else:
        return edge_image * 255 + image 

stackview.interact(my_custom_code, slice_image)
```
![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_interact3.gif)

If you want to use a pulldown for selecting input image(s), you need to pass a dictionary of `(name, image)` pairs as `context`, e.g. `context=globals()`:

```python
image1 = imread("data/Haase_MRT_tfl3d1.tif")
image2 = image1[:,:,::-1]

stackview.interact(gaussian, context=globals(), continuous_update=True)
```

![](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_interact4.gif)

To add an `insight`-view automatically to results of functions, you can add this.

```python
@jupyter_displayable_output
def my_gaussian(image, sigma):
    return gaussian(image, sigma)

my_gaussian(image[60], 2)
```

![img.png](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/jupyter_displayable_output.png)

### Assist

The `stackview.assist()` function can guide you through all imported (and supported) image processing functions.
Note: The interface may be slow or crash if you have many functions imported. Consider using it in an empty notebook 
with only functions or library imported that might be relevant for the taks.

```python
stackview.assist(context=globals(), continuous_update=True)
```

![img.png](https://raw.githubusercontent.com/haesleinhuepf/stackview/main/docs/images/demo_assist.gif)


## Contributing

Contributions, bug-reports and ideas for further development are very welcome.

## License

Distributed under the terms of the [BSD-3] license,
"stackview" is free and open source software

## Issues

If you encounter any problems, please create a thread on [image.sc] along with a detailed description and tag [@haesleinhuepf].

## See also
There are other libraries doing similar stuff
* [ipyannotations](https://github.com/janfreyberg/ipyannotations)
* [napari](https://github.com/napari/napari)
* [JNI's Volume Viewer based on Matplotlib](https://github.com/jni/mpl-volume-viewer)
* [Holoviz hvPlot](https://hvplot.holoviz.org/user_guide/Gridded_Data.html#n-d-plots)
* [magicgui](https://github.com/napari/magicgui)
* [ipywidgets interact](https://ipywidgets.readthedocs.io/en/latest/examples/Using%20Interact.html)

[BSD-3]: http://opensource.org/licenses/BSD-3-Clause
[image.sc]: https://image.sc
[@haesleinhuepf]: https://twitter.com/haesleinhuepf

