Recently we have proposed a structural framework for modelling speech, which is based on patterns of phonological distinctive features, a linguistically well-motivated alternative to standard vector-space acoustic models like HMMs. This framework gives considerable representational freedom by working with features that have explicit linguistic interpretation, but at the expense of the ability to apply the wide range of analytical decision algorithms available in vector spaces, restricting oneself to more computationally expensive and less-developed symbolic metric tools. In this paper we show that a dissimilarity-based distance-preserving transition from the original structural representation to a corresponding pseudo-Euclidean vector s...
Segment based direct models have recently been used to im-prove the output of existing state-of-the-...
Abstract: Recognition of speech, and in particular the ability to generalize and learn from small se...
A long standing view in speech production research posits that articulatory representations are low ...
Recently we have proposed a structural framework for modelling speech, which is based on patterns of...
This paper explores the issues involved in using symbolic metric algorithms for automatic speech rec...
Speech recognition has been a very active area of research over the past twenty years. Despite an ev...
Speech recognition has been a very active area of research over the past twenty years. Despite an ev...
We describe a new method for phoneme sequence recognition given a speech utterance, which is not bas...
We describe the use of Support Vector Machines for phonetic classification on the TIMIT corpus. Unli...
Vector space models of words in NLP---word embeddings---have been recently shown to reliably encode ...
This paper explores the issues involved in using symbolic metric algorithms for automatic speech rec...
The performance degradation as a result of acoustical environment mismatch remains an important prac...
We describe a speech recogniser which uses a speech production-motivated phonetic-feature descriptio...
Some of the best known approaches to Isolated Word Recognition (IWR) are based on the Dynamic Time ...
We describe a speech recogniser which uses a speech production-motivated phonetic-feature descriptio...
Segment based direct models have recently been used to im-prove the output of existing state-of-the-...
Abstract: Recognition of speech, and in particular the ability to generalize and learn from small se...
A long standing view in speech production research posits that articulatory representations are low ...
Recently we have proposed a structural framework for modelling speech, which is based on patterns of...
This paper explores the issues involved in using symbolic metric algorithms for automatic speech rec...
Speech recognition has been a very active area of research over the past twenty years. Despite an ev...
Speech recognition has been a very active area of research over the past twenty years. Despite an ev...
We describe a new method for phoneme sequence recognition given a speech utterance, which is not bas...
We describe the use of Support Vector Machines for phonetic classification on the TIMIT corpus. Unli...
Vector space models of words in NLP---word embeddings---have been recently shown to reliably encode ...
This paper explores the issues involved in using symbolic metric algorithms for automatic speech rec...
The performance degradation as a result of acoustical environment mismatch remains an important prac...
We describe a speech recogniser which uses a speech production-motivated phonetic-feature descriptio...
Some of the best known approaches to Isolated Word Recognition (IWR) are based on the Dynamic Time ...
We describe a speech recogniser which uses a speech production-motivated phonetic-feature descriptio...
Segment based direct models have recently been used to im-prove the output of existing state-of-the-...
Abstract: Recognition of speech, and in particular the ability to generalize and learn from small se...
A long standing view in speech production research posits that articulatory representations are low ...