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cfac436
new tutorial on displaying image data
emmanuelle 2056d13
minor changes
emmanuelle 10d64b9
minor changes
emmanuelle 4654c06
updated how to disable ticks
emmanuelle f97dfc4
zmax update
emmanuelle 4f3bc89
new tutorial on displaying image data
emmanuelle 67c1830
minor changes
emmanuelle cc59b3c
minor changes
emmanuelle 9d01e29
updated how to disable ticks
emmanuelle 4e93741
zmax update
emmanuelle 7696258
Merge branch 'image' of https://github.com/plotly/plotly.py-docs into…
emmanuelle bd06f3b
fix color_continuous_scale
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--- | ||
jupyter: | ||
jupytext: | ||
notebook_metadata_filter: all | ||
text_representation: | ||
extension: .md | ||
format_name: markdown | ||
format_version: '1.1' | ||
jupytext_version: 1.1.1 | ||
kernelspec: | ||
display_name: Python 3 | ||
language: python | ||
name: python3 | ||
language_info: | ||
codemirror_mode: | ||
name: ipython | ||
version: 3 | ||
file_extension: .py | ||
mimetype: text/x-python | ||
name: python | ||
nbconvert_exporter: python | ||
pygments_lexer: ipython3 | ||
version: 3.7.3 | ||
plotly: | ||
description: How to display image data in Python with Plotly. | ||
display_as: scientific | ||
has_thumbnail: true | ||
ipynb: ~notebook_demo/34 | ||
language: python | ||
layout: base | ||
name: Imshow | ||
order: 3 | ||
page_type: example_index | ||
permalink: python/imshow/ | ||
redirect_from: python/imshow/ | ||
thumbnail: thumbnail/imshow.jpg | ||
v4upgrade: true | ||
--- | ||
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This tutorial shows how to display and explore image data. If you would like | ||
instead a logo or static image, use `go.layout.Image` as explained | ||
[here](/python/images). | ||
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### Displaying RBG image data with px.imshow | ||
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`px.imshow` displays multichannel (RGB) or single-channel ("grayscale") image data. | ||
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```python | ||
import plotly.express as px | ||
import numpy as np | ||
img_rgb = np.array([[[255, 0, 0], [0, 255, 0], [0, 0, 255]], | ||
[[0, 255, 0], [0, 0, 255], [255, 0, 0]] | ||
], dtype=np.uint8) | ||
fig = px.imshow(img_rgb) | ||
fig.show() | ||
``` | ||
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### Read image arrays from image files | ||
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In order to create a numerical array to be passed to `px.imshow`, you can use a third-party library like [PIL](https://pillow.readthedocs.io/en/stable/reference/Image.html#PIL.Image.open), [scikit-image](https://scikit-image.org/docs/dev/user_guide/getting_started.html) or [opencv](https://opencv-python-tutroals.readthedocs.io/en/latest/py_tutorials/py_gui/py_image_display/py_image_display.html). We show below how to open an image from a file with `skimage.io.imread`, and alternatively how to load a demo image from `skimage.data`. | ||
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```python | ||
import plotly.express as px | ||
from skimage import io | ||
img = io.imread('https://upload.wikimedia.org/wikipedia/commons/thumb/0/00/Crab_Nebula.jpg/240px-Crab_Nebula.jpg') | ||
fig = px.imshow(img) | ||
fig.show() | ||
``` | ||
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```python | ||
import plotly.express as px | ||
from skimage import data | ||
img = data.astronaut() | ||
fig = px.imshow(img) | ||
fig.show() | ||
``` | ||
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### Display single-channel 2D image as grayscale | ||
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For a 2D image, `px.imshow` uses a colorscale to map scalar data to colors. The default colorscale is the one of the active template (see [the tutorial on templates](/python/templates/)). | ||
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```python | ||
import plotly.express as px | ||
import numpy as np | ||
img = np.arange(15**2).reshape((15, 15)) | ||
fig = px.imshow(img) | ||
fig.show() | ||
``` | ||
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### Choose the colorscale to display a single-channel image | ||
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```python | ||
import plotly.express as px | ||
import numpy as np | ||
img = np.arange(100).reshape((10, 10)) | ||
fig = px.imshow(img, color_continuous_scale='gray') | ||
fig.show() | ||
``` | ||
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### Display multichannel image data with go.Image | ||
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It is also possible to use the `go.Image` trace from the low-level `graph_objects` API in order to display image data. Note that `go.Image` only accepts multichannel images. For single images, use [`go.Heatmap`](/python/heatmaps). | ||
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Note that the `go.Image` trace is different from the `go.layout.Image` class, which can be used for [adding background images or logos to figures](/python/images). | ||
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```python | ||
import plotly.graph_objects as go | ||
img_rgb = [[[255, 0, 0], [0, 255, 0], [0, 0, 255]], | ||
[[0, 255, 0], [0, 0, 255], [255, 0, 0]]] | ||
fig = go.Figure(go.Image(z=img_rgb)) | ||
fig.show() | ||
``` | ||
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### Defining the data range covered by the color range with zmin and zmax | ||
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The data range and color range are mapped together using the parameters `zmin` and `zmax`, which correspond respectively to the data values mapped to black `[0, 0, 0]` and white `[255, 255, 255]`, or to the extreme colors of the colorscale in the case on single-channel data. | ||
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For single-channel data, the defaults values of `zmin` and `zmax` used by `px.imshow` and `go.Heatmap` are the extrema of the data range. For multichannel data, `px.imshow` and `go.Image` use slightly different default values for `zmin` and `zmax`. For `go.Image`, the default value is `zmin=[0, 0, 0]` and `zmax=[255, 255, 255]`, no matter the data type. On the other hand, `px.imshow` adapts the default `zmin` and `zmax` to the data type: | ||
- for integer data types, `zmin` and `zmax` correspond to the extreme values of the data type, for example 0 and 255 for `uint8`, 0 and 65535 for `uint16`, etc. | ||
- for float numbers, the maximum value of the data is computed, and zmax is 1 if the max is smaller than 1, 255 if the max is smaller than 255, etc. (with higher thresholds 2**16 - 1 and 2**32 -1). | ||
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These defaults can be overriden by setting the values of `zmin` and `zmax`. For `go.Image`, `zmin` and `zmax` need to be given for all channels, whereas it is also possible to pass a scalar value (used for all channels) to `px.imshow`. | ||
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```python | ||
import plotly.express as px | ||
from skimage import data | ||
img = data.astronaut() | ||
# Increase contrast by clipping the data range between 50 and 200 | ||
fig = px.imshow(img, zmin=50, zmax=200) | ||
# We customize the hovertemplate to show both the data and the color values | ||
# See https://plot.ly/python/hover-text-and-formatting/#customize-tooltip-text-with-a-hovertemplate | ||
fig.update_traces(hovertemplate="x: %{x} <br> y: %{y} <br> z: %{z} <br> color: %{color}") | ||
fig.show() | ||
``` | ||
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```python | ||
import plotly.express as px | ||
from skimage import data | ||
img = data.astronaut() | ||
# Stretch the contrast of the red channel only, resulting in a more red image | ||
fig = px.imshow(img, zmin=[50, 0, 0], zmax=[200, 255, 255]) | ||
fig.show() | ||
``` | ||
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### Ticks and margins around image data | ||
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```python | ||
import plotly.express as px | ||
from skimage import data | ||
img = data.astronaut() | ||
fig = px.imshow(img) | ||
fig.update_layout(width=400, height=400, margin=dict(l=10, r=10, b=10, t=10)) | ||
fig.update_xaxes(showticklabels=False).update_yaxes(showticklabels=False) | ||
fig.show() | ||
``` | ||
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### Combining image charts and other traces | ||
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```python | ||
import plotly.express as px | ||
import plotly.graph_objects as go | ||
from skimage import data | ||
img = data.camera() | ||
fig = px.imshow(img, color_continuous_scale='gray') | ||
fig.add_trace(go.Contour(z=img, showscale=False, | ||
contours=dict(start=0, end=70, size=70, coloring='lines'), | ||
line_width=2)) | ||
fig.add_trace(go.Scatter(x=[230], y=[100], marker=dict(color='red', size=16))) | ||
fig.show() | ||
``` | ||
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### Displaying an image and the histogram of color values | ||
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```python | ||
from plotly.subplots import make_subplots | ||
from skimage import data | ||
img = data.chelsea() | ||
fig = make_subplots(1, 2) | ||
# We use go.Image because subplots require traces, whereas px functions return a figure | ||
fig.add_trace(go.Image(z=img), 1, 1) | ||
for channel, color in enumerate(['red', 'green', 'blue']): | ||
fig.add_trace(go.Histogram(x=img[..., channel].ravel(), opacity=0.5, | ||
marker_color=color, name='%s channel' %color), 1, 2) | ||
fig.update_layout(height=400) | ||
fig.show() | ||
``` | ||
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#### Reference | ||
See https://plot.ly/python/reference/#image for more information and chart attribute options! | ||
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