DocumentCode :
1756818
Title :
An Overview of Noise-Robust Automatic Speech Recognition
Author :
Jinyu Li ; Li Deng ; Yifan Gong ; Haeb-Umbach, Reinhold
Author_Institution :
Microsoft Corp., Redmond, WA, USA
Volume :
22
Issue :
4
fYear :
2014
fDate :
41730
Firstpage :
745
Lastpage :
777
Abstract :
New waves of consumer-centric applications, such as voice search and voice interaction with mobile devices and home entertainment systems, increasingly require automatic speech recognition (ASR) to be robust to the full range of real-world noise and other acoustic distorting conditions. Despite its practical importance, however, the inherent links between and distinctions among the myriad of methods for noise-robust ASR have yet to be carefully studied in order to advance the field further. To this end, it is critical to establish a solid, consistent, and common mathematical foundation for noise-robust ASR, which is lacking at present. This article is intended to fill this gap and to provide a thorough overview of modern noise-robust techniques for ASR developed over the past 30 years. We emphasize methods that are proven to be successful and that are likely to sustain or expand their future applicability. We distill key insights from our comprehensive overview in this field and take a fresh look at a few old problems, which nevertheless are still highly relevant today. Specifically, we have analyzed and categorized a wide range of noise-robust techniques using five different criteria: 1) feature-domain vs. model-domain processing, 2) the use of prior knowledge about the acoustic environment distortion, 3) the use of explicit environment-distortion models, 4) deterministic vs. uncertainty processing, and 5) the use of acoustic models trained jointly with the same feature enhancement or model adaptation process used in the testing stage. With this taxonomy-oriented review, we equip the reader with the insight to choose among techniques and with the awareness of the performance-complexity tradeoffs. The pros and cons of using different noise-robust ASR techniques in practical application scenarios are provided as a guide to interested practitioners. The current challenges and future research directions in this field is also carefully analyzed.
Keywords :
mathematical analysis; mobile computing; speech recognition; ASR; acoustic distorting conditions; consumer centric applications; feature enhancement; home entertainment systems; mathematical foundation; mobile devices; noise robust automatic speech recognition; noise robust techniques; voice interaction; voice search; Acoustic distortion; Cepstral analysis; IEEE transactions; Noise robustness; Speech; Speech processing; Speech recognition; compensation; distortion modeling; joint model training; noise, robustness; uncertainty processing;
fLanguage :
English
Journal_Title :
Audio, Speech, and Language Processing, IEEE/ACM Transactions on
Publisher :
ieee
ISSN :
2329-9290
Type :
jour
DOI :
10.1109/TASLP.2014.2304637
Filename :
6732927
Link To Document :
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