Article Outline
Example Python program colorize (1).py
Modules
- import matplotlib
- import matplotlib.cm
- import tensorflow as tf
Methods
- def colorize(value, vmin=None, vmax=None, cmap=None):
Code
Python example
import matplotlib
import matplotlib.cm
import tensorflow as tf
def colorize(value, vmin=None, vmax=None, cmap=None):
"""
A utility function for TensorFlow that maps a grayscale image to a matplotlib
colormap for use with TensorBoard image summaries.
By default it will normalize the input value to the range 0..1 before mapping
to a grayscale colormap.
Arguments:
- value: 2D Tensor of shape [height, width] or 3D Tensor of shape
[height, width, 1].
- vmin: the minimum value of the range used for normalization.
(Default: value minimum)
- vmax: the maximum value of the range used for normalization.
(Default: value maximum)
- cmap: a valid cmap named for use with matplotlib's `get_cmap`.
(Default: 'gray')
Example usage:
```
output = tf.random_uniform(shape=[256, 256, 1])
output_color = colorize(output, vmin=0.0, vmax=1.0, cmap='viridis')
tf.summary.image('output', output_color)
```
Returns a 3D tensor of shape [height, width, 3].
"""
# normalize
vmin = tf.reduce_min(value) if vmin is None else vmin
vmax = tf.reduce_max(value) if vmax is None else vmax
value = (value - vmin) / (vmax - vmin) # vmin..vmax
# squeeze last dim if it exists
value = tf.squeeze(value)
# quantize
indices = tf.to_int32(tf.round(value * 255))
# gather
cm = matplotlib.cm.get_cmap(cmap if cmap is not None else 'gray')
colors = tf.constant(cm.colors, dtype=tf.float32)
value = tf.gather(colors, indices)
return value
Useful Links
- Articles: https://python-commandments.org/
- Python shell: https://bsdnerds.org/learn-python/
- Tutorial: https://pythonprogramminglanguage.com/