2

I may be doing something silly here, but I'm not sure why I'm getting this error.

This code works:

example = tf.train.Example(features=tf.train.Features(feature={
      'image/height': _int64_feature(FLAGS.img_height),
      'image/width': _int64_feature(FLAGS.img_width),
      'image/colorspace': _bytes_feature(tf.compat.as_bytes(colorspace)),
      'image/channels': _int64_feature(channels),
      'image/format': _bytes_feature(tf.compat.as_bytes(image_format)),
      'image/label': _bytes_feature(label_img_buffer),
      'image/label_path': _bytes_feature(tf.compat.as_bytes(os.path.basename(lbl_path))),
      'image/fn_0': _bytes_feature(tf.compat.as_bytes(os.path.basename(ex_paths[0]))),
      'image/encoded_0': _bytes_feature(tf.compat.as_bytes(ex_image_buffers[0])),
      'image/fn_1': _bytes_feature(tf.compat.as_bytes(os.path.basename(ex_paths[1]))),
      'image/encoded_1': _bytes_feature(tf.compat.as_bytes(ex_image_buffers[1])),
      'image/fn_2': _bytes_feature(tf.compat.as_bytes(os.path.basename(ex_paths[2]))),
      'image/encoded_2': _bytes_feature(tf.compat.as_bytes(ex_image_buffers[2]))}))
return example

But this code does not work (throws the TypeError in the post title):

feature_dict={
      'image/height': _int64_feature(FLAGS.img_height),
      'image/width': _int64_feature(FLAGS.img_width),
      'image/colorspace': _bytes_feature(tf.compat.as_bytes(colorspace)),
      'image/channels': _int64_feature(channels),
      'image/format': _bytes_feature(tf.compat.as_bytes(image_format)),
      'image/label': _bytes_feature(label_img_buffer),
      'image/label_path': _bytes_feature(tf.compat.as_bytes(os.path.basename(lbl_path))),
      }

  for idx, image in sorted(ex_image_buffers.iteritems()):
    img_key = 'image/encoded_' + str(idx)
    fn_key = 'image/fn_' + str(idx)
    feature_dict[img_key] = _bytes_feature(tf.compat.as_bytes(image))
    feature_dict[fn_key] = _bytes_feature(tf.compat.as_bytes(os.path.basename(ex_paths[idx])))

  example = tf.train.Example(features=tf.train.Features(feature_dict))
  return example

ex_image_buffers is a list.

As far as I can tell, tf.train.Features takes a dictionary as an argument, and I'm assembling the same dictionary (I think) in the first example and the second. The second allows me to adjust the dictionary based on some other code, so I'd prefer to avoid hard-coding the different fields.

Ideas? Thanks for any help!

1 Answer 1

9

Yep, I think you have a silly mistake. Try

example = tf.train.Example(features=tf.train.Features(feature=feature_dict))

as the error states, tf.train.Features requires you to pass by keyword/argument pairs. You need to add keyword feature as was done in the first example you provided.

4
  • Thanks, that worked. Appreciate the help. Why would this requirement be here? Commented Apr 24, 2017 at 4:36
  • I did not design the API so I can't say. You are using the constructor of the class and the documentation (tensorflow.org/api_docs/python/tf/train/Features) shows only **kwargs as input.
    – Jim Parker
    Commented Apr 24, 2017 at 13:50
  • @JimParker that link to documentation you provided has absolutely nothing. Is there a way to know about what these methods do, because the documentation is mostly a list of all the methods.
    – deadcode
    Commented Feb 26, 2018 at 10:59
  • @deadcode: Um, that webpage has been changed (Jan 2018)...don't see old info. Best try following links to the definitions.
    – Jim Parker
    Commented Feb 27, 2018 at 20:06

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