I am trying to write a preprocessing function using OpenCV through tensorflow dataset pipeline. Following this post do not work in my case.

To explicit my point, consider this dummy tensor:

import tensorflow as tf
import numpy as np
ds1 = tf.random.uniform(
ds2 = tf.data.Dataset.from_tensor_slices(ds1).batch(batch_size=2)
Out[4]: <BatchDataset element_spec=TensorSpec(shape=(None, 5, 4, 3), dtype=tf.float64, name=None)>

Next, my goal is to apply preprocessing step on these "array" (a.k.a images obtained using tf.keras.preprocessing.image_dataset_from_directory in practices...)

Some dummy functions :

def preprocess_images(x):
    return x+1

def parse_func_decorator(x):
    return tf.py_function(preprocess_images, [x], tf.float64)

Now begins the mystery that I want to understand: Applying the preprocessing function via py_function gives unknown shape :

ds3 = ds2.map(parse_func_decorator)
Out[7]: <MapDataset element_spec=TensorSpec(shape=<unknown>, dtype=tf.float64, name=None)>

On the other hand, mapping the preprocessing function, directly, conserve dimension

ds5 = ds2.map(preprocess_images)
Out[9]: <MapDataset element_spec=TensorSpec(shape=(None, 5, 4, 3), dtype=tf.float64, name=None)>

What am I missing ?

  • When you call py_function, why do you use brackets in the x [x]? Aug 11, 2022 at 10:55
  • syntax reason !
    – aRedDish
    Jan 12, 2023 at 19:13

1 Answer 1


Finally, I have found that mapping a keras Input layers solves this issues.

data_rescale = tf.keras.Sequential([
    tf.keras.layers.Input(shape=(5, 4, 3))

ds4 = ds2.map(lambda x: (data_rescale(x)))
Out[19]: <MapDataset element_spec=TensorSpec(shape=(None, 5, 4, 3), dtype=tf.float32, name=None)>
  • can you share your solution please? I think I'm running in a very similar issue but I'm already using input layers Nov 9, 2022 at 17:03
  • Hi, I have added my solution. Hope doesn't come late ! HNY !
    – aRedDish
    Jan 12, 2023 at 19:11

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