# How to implement histogram equalization for images in tensorflow?

I'm a Deep Learning and Tensorflow novice.

I'm trying to modify cifar10 tensorflow tutorial for using it with faces input images.

How can I compute histogram equalization?

Is it possible to wrap solutions similar to the one in: Histogram equalization of grayscale images with NumPy ?

For grayscale uint8 image you can use something like this:

def tf_equalize_histogram(image):
values_range = tf.constant([0., 255.], dtype = tf.float32)
histogram = tf.histogram_fixed_width(tf.to_float(image), values_range, 256)
cdf = tf.cumsum(histogram)
cdf_min = cdf[tf.reduce_min(tf.where(tf.greater(cdf, 0)))]

img_shape = tf.shape(image)
pix_cnt = img_shape[-3] * img_shape[-2]
px_map = tf.round(tf.to_float(cdf - cdf_min) * 255. / tf.to_float(pix_cnt - 1))
px_map = tf.cast(px_map, tf.uint8)

eq_hist = tf.expand_dims(tf.gather_nd(px_map, tf.cast(image, tf.int32)), 2)
return eq_hist

For test:

import tensorflow as tf
import numpy as np
import cv2

image_ph = tf.placeholder(tf.uint8, shape = [None, None, 1])
image_eq_hist = tf_equalize_histogram(image_ph)