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 | 
Performs beam search decoding on the logits given in input.
tf.compat.v1.nn.ctc_beam_search_decoder(
    inputs, sequence_length, beam_width=100, top_paths=1, merge_repeated=True
)
If merge_repeated is True, merge repeated classes in the output beams.
This means that if consecutive entries in a beam are the same,
only the first of these is emitted.  That is, when the sequence is
A B B * B * B (where '*' is the blank label), the return value is:
A Bifmerge_repeated = True.A B B Bifmerge_repeated = False.
Args | |
|---|---|
inputs
 | 
3-D float Tensor, size [max_time x batch_size x num_classes].
The logits.
 | 
sequence_length
 | 
1-D int32 vector containing sequence lengths, having size
[batch_size].
 | 
beam_width
 | 
An int scalar >= 0 (beam search beam width). | 
top_paths
 | 
An int scalar >= 0, <= beam_width (controls output size). | 
merge_repeated
 | 
Boolean. Default: True. | 
Returns | |
|---|---|
A tuple (decoded, log_probabilities) where
 | 
|
decoded
 | 
A list of length top_paths, where decoded[j]
is a SparseTensor containing the decoded outputs:
 
 
  | 
log_probability
 | 
A float matrix (batch_size x top_paths) containing
sequence log-probabilities.
 | 
    View source on GitHub