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In this book we address robustness issues at the speech recognition
and natural language parsing levels, with a focus on feature
extraction and noise robust recognition, adaptive systems, language
modeling, parsing, and natural language understanding. This book
attempts to give a clear overview of the main technologies used in
language and speech processing, along with an extensive
bibliography to enable topics of interest to be pursued further. It
also brings together speech and language technologies often
considered separately. Robustness in Language and Speech Technology
serves as a valuable reference and although not intended as a
formal university textbook, contains some material that can be used
for a course at the graduate or undergraduate level.
Robust Speech Recognition in Embedded Systems and PC Applications
provides a link between the technology and the application worlds.
As speech recognition technology is now good enough for a number of
applications and the core technology is well established around
hidden Markov models many of the differences between systems found
in the field are related to implementation variants. We distinguish
between embedded systems and PC-based applications. Embedded
applications are usually cost sensitive and require very simple and
optimized methods to be viable. Robust Speech Recognition in
Embedded Systems and PC Applications reviews the problems of robust
speech recognition, summarizes the current state of the art of
robust speech recognition while providing some perspectives, and
goes over the complementary technologies that are necessary to
build an application, such as dialog and user interface
technologies. Robust Speech Recognition in Embedded Systems and PC
Applications is divided into five chapters. The first one reviews
the main difficulties encountered in automatic speech recognition
when the type of communication is unknown. The second chapter
focuses on environment-independent/adaptive speech recognition
approaches and on the mainstream methods applicable to noise robust
speech recognition. The third chapter discusses several critical
technologies that contribute to making an application usable. It
also provides some design recommendations on how to design prompts,
generate user feedback and develop speech user interfaces. The
fourth chapter reviews several techniques that are particularly
useful for embedded systems or to decrease computational
complexity. It also presents some case studies for embedded
applications and PC-based systems. Finally, the fifth chapter
provides a future outlook for robust speech recognition,
emphasizing the areas that the author sees as the most promising
for the future. Robust Speech Recognition in Embedded Systems and
PC Applications serves as a valuable reference and although not
intended as a formal University textbook, contains some material
that can be used for a course at the graduate or undergraduate
level. It is a good complement for the book entitled Robustness in
Automatic Speech Recognition: Fundamentals and Applications
co-authored by the same author.
Foreword Looking back the past 30 years. we have seen steady
progress made in the area of speech science and technology. I still
remember the excitement in the late seventies when Texas
Instruments came up with a toy named "Speak-and-Spell" which was
based on a VLSI chip containing the state-of-the-art linear
prediction synthesizer. This caused a speech technology fever among
the electronics industry. Particularly. applications of automatic
speech recognition were rigorously attempt ed by many companies.
some of which were start-ups founded just for this purpose.
Unfortunately. it did not take long before they realized that
automatic speech rec ognition technology was not mature enough to
satisfy the need of customers. The fever gradually faded away. In
the meantime. constant efforts have been made by many researchers
and engi neers to improve the automatic speech recognition
technology. Hardware capabilities have advanced impressively since
that time. In the past few years. we have been witnessing and
experiencing the advent of the "Information Revolution." What might
be called the second surge of interest to com mercialize speech
technology as a natural interface for man-machine communication
began in much better shape than the first one. With computers much
more powerful and faster. many applications look realistic this
time. However. there are still tremendous practical issues to be
overcome in order for speech to be truly the most natural interface
between humans and machines."
Foreword Looking back the past 30 years. we have seen steady
progress made in the area of speech science and technology. I still
remember the excitement in the late seventies when Texas
Instruments came up with a toy named "Speak-and-Spell" which was
based on a VLSI chip containing the state-of-the-art linear
prediction synthesizer. This caused a speech technology fever among
the electronics industry. Particularly. applications of automatic
speech recognition were rigorously attempt ed by many companies.
some of which were start-ups founded just for this purpose.
Unfortunately. it did not take long before they realized that
automatic speech rec ognition technology was not mature enough to
satisfy the need of customers. The fever gradually faded away. In
the meantime. constant efforts have been made by many researchers
and engi neers to improve the automatic speech recognition
technology. Hardware capabilities have advanced impressively since
that time. In the past few years. we have been witnessing and
experiencing the advent of the "Information Revolution." What might
be called the second surge of interest to com mercialize speech
technology as a natural interface for man-machine communication
began in much better shape than the first one. With computers much
more powerful and faster. many applications look realistic this
time. However. there are still tremendous practical issues to be
overcome in order for speech to be truly the most natural interface
between humans and machines."
Robust Speech Recognition in Embedded Systems and PC Applications
provides a link between the technology and the application worlds.
As speech recognition technology is now good enough for a number of
applications and the core technology is well established around
hidden Markov models many of the differences between systems found
in the field are related to implementation variants. We distinguish
between embedded systems and PC-based applications. Embedded
applications are usually cost sensitive and require very simple and
optimized methods to be viable. Robust Speech Recognition in
Embedded Systems and PC Applications reviews the problems of robust
speech recognition, summarizes the current state of the art of
robust speech recognition while providing some perspectives, and
goes over the complementary technologies that are necessary to
build an application, such as dialog and user interface
technologies. Robust Speech Recognition in Embedded Systems and PC
Applications is divided into five chapters. The first one reviews
the main difficulties encountered in automatic speech recognition
when the type of communication is unknown. The second chapter
focuses on environment-independent/adaptive speech recognition
approaches and on the mainstream methods applicable to noise robust
speech recognition. The third chapter discusses several critical
technologies that contribute to making an application usable. It
also provides some design recommendations on how to design prompts,
generate user feedback and develop speech user interfaces. The
fourth chapter reviews several techniques that are particularly
useful for embedded systems or to decrease computational
complexity. It also presents some case studies for embedded
applications and PC-based systems. Finally, the fifth chapter
provides a future outlook for robust speech recognition,
emphasizing the areas that the author sees as the most promising
for the future. Robust Speech Recognition in Embedded Systems and
PC Applications serves as a valuable reference and although not
intended as a formal University textbook, contains some material
that can be used for a course at the graduate or undergraduate
level. It is a good complement for the book entitled Robustness in
Automatic Speech Recognition: Fundamentals and Applications
co-authored by the same author.
In this book we address robustness issues at the speech recognition
and natural language parsing levels, with a focus on feature
extraction and noise robust recognition, adaptive systems, language
modeling, parsing, and natural language understanding. This book
attempts to give a clear overview of the main technologies used in
language and speech processing, along with an extensive
bibliography to enable topics of interest to be pursued further. It
also brings together speech and language technologies often
considered separately. Robustness in Language and Speech Technology
serves as a valuable reference and although not intended as a
formal university textbook, contains some material that can be used
for a course at the graduate or undergraduate level.
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