Connectionist temporal classification

Alex Graves(Dalle Molle Institute for Artificial Intelligence Research), Santiago Fernández(Dalle Molle Institute for Artificial Intelligence Research), Faustino Gomez(Dalle Molle Institute for Artificial Intelligence Research), Jürgen Schmidhuber(Technical University of Munich)
Unknown
January 1, 2006
Cited by 5,437

Abstract

Many real-world sequence learning tasks require the prediction of sequences of labels from noisy, unsegmented input data. In speech recognition, for example, an acoustic signal is transcribed into words or sub-word units. Recurrent neural networks (RNNs) are powerful sequence learners that would seem well suited to such tasks. However, because they require pre-segmented training data, and post-processing to transform their outputs into label sequences, their applicability has so far been limited. This paper presents a novel method for training RNNs to label unsegmented sequences directly, thereby solving both problems. An experiment on the TIMIT speech corpus demonstrates its advantages over both a baseline HMM and a hybrid HMM-RNN.


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