tf.nn.ctc_loss(labels, inputs, sequence_length, preprocess_collapse_repeated=False, ctc_merge_repeated=True, time_major=True)
See the guide: Neural Network > Connectionist Temporal Classification (CTC)
Computes the CTC (Connectionist Temporal Classification) Loss.
This op implements the CTC loss as presented in the article:
A. Graves, S. Fernandez, F. Gomez, J. Schmidhuber. Connectionist Temporal Classification: Labelling Unsegmented Sequence Data with Recurrent Neural Networks. ICML 2006, Pittsburgh, USA, pp. 369-376.
http://www.cs.toronto.edu/~graves/icml_2006.pdf
Input requirements:
sequence_length(b) <= time for all b max(labels.indices(labels.indices[:, 1] == b, 2)) <= sequence_length(b) for all b.
Notes:
This class performs the softmax operation for you, so inputs should be e.g. linear projections of outputs by an LSTM.
The inputs
Tensor's innermost dimension size, num_classes
, represents num_labels + 1
classes, where num_labels is the number of true labels, and the largest value (num_classes - 1)
is reserved for the blank label.
For example, for a vocabulary containing 3 labels [a, b, c]
, num_classes = 4
and the labels indexing is {a: 0, b: 1, c: 2, blank: 3}
.
Regarding the arguments preprocess_collapse_repeated
and ctc_merge_repeated
:
If preprocess_collapse_repeated
is True, then a preprocessing step runs before loss calculation, wherein repeated labels passed to the loss are merged into single labels. This is useful if the training labels come from, e.g., forced alignments and therefore have unnecessary repetitions.
If ctc_merge_repeated
is set False, then deep within the CTC calculation, repeated non-blank labels will not be merged and are interpreted as individual labels. This is a simplified (non-standard) version of CTC.
Here is a table of the (roughly) expected first order behavior:
preprocess_collapse_repeated=False
, ctc_merge_repeated=True
Classical CTC behavior: Outputs true repeated classes with blanks in between, and can also output repeated classes with no blanks in between that need to be collapsed by the decoder.
preprocess_collapse_repeated=True
, ctc_merge_repeated=False
Never learns to output repeated classes, as they are collapsed in the input labels before training.
preprocess_collapse_repeated=False
, ctc_merge_repeated=False
Outputs repeated classes with blanks in between, but generally does not require the decoder to collapse/merge repeated classes.
preprocess_collapse_repeated=True
, ctc_merge_repeated=True
Untested. Very likely will not learn to output repeated classes.
labels
: An int32
SparseTensor
. labels.indices[i, :] == [b, t]
means labels.values[i]
stores the id for (batch b, time t). labels.values[i]
must take on values in [0, num_labels)
. See core/ops/ctc_ops.cc
for more details.inputs
: 3-D float
Tensor
. If time_major == False, this will be a Tensor
shaped: [batch_size x max_time x num_classes]
. If time_major == True (default), this will be a Tensor
shaped: [max_time x batch_size x num_classes]
. The logits.sequence_length
: 1-D int32
vector, size [batch_size]
. The sequence lengths.preprocess_collapse_repeated
: Boolean. Default: False. If True, repeated labels are collapsed prior to the CTC calculation.ctc_merge_repeated
: Boolean. Default: True.time_major
: The shape format of the inputs
Tensors. If True, these Tensors
must be shaped [max_time, batch_size, num_classes]
. If False, these Tensors
must be shaped [batch_size, max_time, num_classes]
. Using time_major = True
(default) is a bit more efficient because it avoids transposes at the beginning of the ctc_loss calculation. However, most TensorFlow data is batch-major, so by this function also accepts inputs in batch-major form.A 1-D float
Tensor
, size [batch]
, containing the negative log probabilities.
TypeError
: if labels is not a SparseTensor
.Defined in tensorflow/python/ops/ctc_ops.py
.
© 2017 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/api_docs/python/tf/nn/ctc_loss