A speech event detection and localization task for multiroom environments

Hands-free Speech Communication and Microphone Arrays(2014)

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摘要
Domestic environments are particularly challenging for distant speech recognition and audio processing in general. Reverberation, background noise and interfering sources, as well as the propagation of acoustic events across adjacent rooms, critically degrade the performance of standard speech processing algorithms. The DIRHA EU project addresses the development of distant-speech interaction with devices and services within the multiple rooms of typical apartments. A corpus of multichannel acoustic data has been created to represent realistic acoustic scenes, of different degrees of complexity, occurring in such an environment. It includes multichannel simulations based on measured impulse responses and real data collected in the same apartment. A basic but fundamental task of the front-end processing enabling effective ASR is the detection and localization of speech events generated by users, without constraints on their position or orientation within the various rooms. In this paper we describe the acoustic corpus and present a baseline approach to the joint task of speech detection and source localization, using speech related features such as pitch, combined with features derived from spatial coherence.
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关键词
acoustic signal processing,audio signal processing,reverberation,speech recognition,asr,dirha eu project,acoustic corpus,acoustic event propagation,audio processing,automatic speech recognition,background noise,distant speech recognition,distant-speech interaction,distant-speech interaction for robust home application,domestic environments,impulse responses,interfering sources,multichannel acoustic data,multiroom environments,realistic acoustic scenes,source localization,spatial coherence,speech event detection,speech event localization,standard speech processing algorithm,speech activity detection,acoustic corpora,distributed microphone networks
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