3

I am using tensorflow's dataset API. And testing my code with simple case. Below shows the simple code I used. The problem is, when the dataset size is small, it seems the returned size from dataset API is not consistent. I'm sure there is a proper way to deal with it. But even though I read all the function in that page and tutorial, I could not find that.

import numpy as np
import tensorflow as tf

data_source = tf.zeros([24, 200, 64, 64, 1]) #[number_of_video, steps, pixel_w, pixel_h, channel]
dataset = tf.contrib.data.Dataset.from_tensor_slices(data_source)
dataset = dataset.shuffle(buffer_size=100)
dataset = dataset.batch(16)
dataset = dataset.repeat()

iterator = tf.contrib.data.Iterator.from_structure(dataset.output_types, dataset.output_shapes)
next_element = iterator.get_next()
training_init_op = iterator.make_initializer(dataset)

with tf.Session() as sess:
    sess.run(training_init_op)
    next_elem = next_element.eval()
    print(np.shape(next_elem))
    next_elem = next_element.eval()
    print(np.shape(next_elem))
    next_elem = next_element.eval()
    print(np.shape(next_elem))
    next_elem = next_element.eval()
    print(np.shape(next_elem))
    next_elem = next_element.eval()
    print(np.shape(next_elem))
    next_elem = next_element.eval()
    print(np.shape(next_elem))
    next_elem = next_element.eval()
    print(np.shape(next_elem))

The dataset is grayscale video. There are totally 24 sequence of video and step size is all 200. Frame size is 64 by 64 and single channel. I set batch size as 16 and buffer size as 100. But the result of the code is,

(16, 200, 64, 64, 1)
(8, 200, 64, 64, 1)
(16, 200, 64, 64, 1)
(8, 200, 64, 64, 1)
(16, 200, 64, 64, 1)
(8, 200, 64, 64, 1)
(16, 200, 64, 64, 1)

The returned size of video is either 16 or 8. I guess it is because the original data size is small, 24, when it reaches the end of data, the API just returns what is left.

But I don't understand. I also set buffer size as 100. That means the buffer should be filled in advance with small dataset. And from that buffer, the API should select next_element whose batch size if 16.

When I used queue-type API in tensorflow, I didn't have this problem. Whatever the size of original data is, anyway there is an moment when the iterator reaches the end of dataset. I wonder how this problem is solved by other people using this API.

6

Try to call repeat() before batch():

data_source = tf.zeros([24, 200, 64, 64, 1]) #[number_of_video, steps, pixel_w, pixel_h, channel]
dataset = tf.contrib.data.Dataset.from_tensor_slices(data_source)
dataset = dataset.shuffle(buffer_size=100)
dataset = dataset.repeat()
dataset = dataset.batch(16)

The result I get:

(16, 200, 64, 64, 1)
(16, 200, 64, 64, 1)
(16, 200, 64, 64, 1)
(16, 200, 64, 64, 1)
(16, 200, 64, 64, 1)
(16, 200, 64, 64, 1)
(16, 200, 64, 64, 1)
0

You can use the code below to solve the problem:

batched = dataset.apply(tf.contrib.data.batch_and_drop_remainder(128))
  • 1
    When answering, please provide more explanation. – Bram Vanroy Oct 30 '18 at 10:27

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