This paper presents a weighted finite state transducer (WFST) based syllable decoding and transduction framework for key-word search (KWS). Acoustic context dependent phone models are trained from word forced alignments. Then syllable decoding is done with lattices generated using a syllable lexicon and language model (LM). To process out-of-vocabulary (OOV) keywords, pronunciations are produced using a grapheme-to-syllable (G2S) system. A syllable to word lexical transducer containing both in-vocabulary (IV) and OOV keywords is then constructed and composed with a keyword-boosted LM transducer. The composed transducer is then used to transduce syllable lattices to word lattices for final KWS. We show that our method can effectively perform...
State of the art technologies for speech recognition are very accurate for heavily studied languages...
In this dissertation, three research directions were explored to alleviate two major issues, i.e., t...
Recent works have shown Neural Network based Language Models (NNLMs) to be an effective modeling tec...
This paper presents a keyword spotting method based on searching a syllable lattice structure. The M...
This paper investigates detection of English keywords in a conver-sational scenario using a combinat...
Keyword spotting becomes a very important branch of speech recognition. But the acoustic mismatch be...
We propose a method for finding keywords in an audio database using a spoken query. Our method is ba...
This paper investigates detection of English keywords in a conversational scenario using a combinati...
Out-of-vocabulary (OOV) keywords present a challenge for keyword search (KWS) systems especially in ...
Abstract. Keyword search methods based on subword lattice can exclude the problem of Out of Vocabula...
International audienceIn this paper we aim to enhance keyword search for conversational telephone sp...
This paper quantifies the value of pronunciation lexicons in large vocabulary continuous speech reco...
This paper presents recent progress in developing speech-to-text (STT) and keyword spotting (KWS) sy...
The point process model (PPM) for keyword search is a whole-word parametric modeling framework based...
The spoken term detection (STD) task aims to return relevant segments from a spoken archive that con...
State of the art technologies for speech recognition are very accurate for heavily studied languages...
In this dissertation, three research directions were explored to alleviate two major issues, i.e., t...
Recent works have shown Neural Network based Language Models (NNLMs) to be an effective modeling tec...
This paper presents a keyword spotting method based on searching a syllable lattice structure. The M...
This paper investigates detection of English keywords in a conver-sational scenario using a combinat...
Keyword spotting becomes a very important branch of speech recognition. But the acoustic mismatch be...
We propose a method for finding keywords in an audio database using a spoken query. Our method is ba...
This paper investigates detection of English keywords in a conversational scenario using a combinati...
Out-of-vocabulary (OOV) keywords present a challenge for keyword search (KWS) systems especially in ...
Abstract. Keyword search methods based on subword lattice can exclude the problem of Out of Vocabula...
International audienceIn this paper we aim to enhance keyword search for conversational telephone sp...
This paper quantifies the value of pronunciation lexicons in large vocabulary continuous speech reco...
This paper presents recent progress in developing speech-to-text (STT) and keyword spotting (KWS) sy...
The point process model (PPM) for keyword search is a whole-word parametric modeling framework based...
The spoken term detection (STD) task aims to return relevant segments from a spoken archive that con...
State of the art technologies for speech recognition are very accurate for heavily studied languages...
In this dissertation, three research directions were explored to alleviate two major issues, i.e., t...
Recent works have shown Neural Network based Language Models (NNLMs) to be an effective modeling tec...