An Italian speaker-independent continuous-speech digit recognizer is described. The CSLU Toolkit was used to develop and implement the system. In the first set of experiments, the SPK-IRST corpus, a collection of digit sentences recorded in a clean environment, was used both for training and testing the system. In the second set, a band-filtered version (between 300 Hz and 3400 Hz) of the SPK-IRST corpus was considered for training, while the telephone PANDA-CSELT corpus was used for testing the system. A hybrid HMM/NN architecture was applied; in this architecture, a three-layer neural network is used as a state emission probability estimator and the conventional forward-backward algorithm is applied for estimating continuous targets for the NN training patterns. The final network, trained to estimate the probability of 116 contextdependent phonetic categories at every 10-msec frame, was not trained on binary target values, but on the probabilities of each phonetic category belonging to each frame. Training and testing will be described in detail and recognition results will be illustrated.
HMM/Neural Network-Based System for Italian Conituous Digit Recognition
Cosi P;
1999
Abstract
An Italian speaker-independent continuous-speech digit recognizer is described. The CSLU Toolkit was used to develop and implement the system. In the first set of experiments, the SPK-IRST corpus, a collection of digit sentences recorded in a clean environment, was used both for training and testing the system. In the second set, a band-filtered version (between 300 Hz and 3400 Hz) of the SPK-IRST corpus was considered for training, while the telephone PANDA-CSELT corpus was used for testing the system. A hybrid HMM/NN architecture was applied; in this architecture, a three-layer neural network is used as a state emission probability estimator and the conventional forward-backward algorithm is applied for estimating continuous targets for the NN training patterns. The final network, trained to estimate the probability of 116 contextdependent phonetic categories at every 10-msec frame, was not trained on binary target values, but on the probabilities of each phonetic category belonging to each frame. Training and testing will be described in detail and recognition results will be illustrated.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


