2012
DOI: 10.1109/tasl.2011.2163395
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Transcribing Meetings With the AMIDA Systems

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Cited by 112 publications
(91 citation statements)
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“…This paper investigates the use of DNN-based acoustic modeling for distant speech recognition in the context of a meeting recognition task using AMI corpus [9]. The objective is to study how deep architectures can reduce the mismatch between systems trained on clean speech from close-talking microphones (also called individual head microphone (IHM)) and noisy and reverberant speech from single distant microphone (SDM) (i.e., to improve the distant ASR performance by also using IHM data).…”
Section: Introductionmentioning
confidence: 99%
“…This paper investigates the use of DNN-based acoustic modeling for distant speech recognition in the context of a meeting recognition task using AMI corpus [9]. The objective is to study how deep architectures can reduce the mismatch between systems trained on clean speech from close-talking microphones (also called individual head microphone (IHM)) and noisy and reverberant speech from single distant microphone (SDM) (i.e., to improve the distant ASR performance by also using IHM data).…”
Section: Introductionmentioning
confidence: 99%
“…These advanced techniques take into account the estimated noise or interfering signal characteristics for superior noise suppression capability [43,44]. In the context of ASR, beamforming techniques have been successfully exploited in the ICSI/SRI [45] and AMIDA [46] systems for transcriptions of meetings [47]. Another research efforts have explored unified multichannel-based speech recognition such as LIMABEAM and multi-channel-based neural networks speech recognizer.…”
Section: Multi-channel Integration In Acoustic Modelingmentioning
confidence: 99%
“…In addition to the AMI test set, the trained acoustic models are evaluated on a NIST Rich Transcription (RT-07) ASR evaluation task to determine if the feature mapping approach trained on the AMI corpus improves the ASR performance of unseen condition. The experiments used the suggested AMI corpus partitions for training and evaluation sets [46,47], even though some of the meeting recordings were discarded from the original corpus when array recordings were missing, to ensure that both headset recordings and the corresponding synchronized array recordings are available for training and testing.…”
Section: Experimental Data and Setupmentioning
confidence: 99%
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“…The simulated ASR noise percentage varied from 10% to 30%, because the best recognition accuracy reaches around 70% in conversational environments [37]. However, noise was never applied to the explicit query itself.…”
mentioning
confidence: 99%