Whispy: Adapting STT Whisper Models to Real-Time Environments

Antonio Bevilacqua, Paolo Saviano, Alessandro Amirante, Simon Pietro Romano
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Abstract

Large general-purpose transformer models have recently become the mainstay in the realm of speech analysis. In particular, Whisper achieves state-of-the-art results in relevant tasks such as speech recognition, translation, language identification, and voice activity detection. However, Whisper models are not designed to be used in real-time conditions, and this limitation makes them unsuitable for a vast plethora of practical applications. In this paper, we introduce Whispy, a system intended to bring live capabilities to the Whisper pretrained models. As a result of a number of architectural optimisations, Whispy is able to consume live audio streams and generate high level, coherent voice transcriptions, while still maintaining a low computational cost. We evaluate the performance of our system on a large repository of publicly available speech datasets, investigating how the transcription mechanism introduced by Whispy impacts on the Whisper output. Experimental results show how Whispy excels in robustness, promptness, and accuracy.
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Whispy:根据实时环境调整 STT Whisper 模型
大型通用变压器模型最近已成为语音分析领域的主流。其中,Whisper 在语音识别、翻译、语言识别和语音活动检测等相关任务中取得了最先进的结果。然而,Whisper 模型并非设计用于实时条件下,这一局限性使其不适合大量的实际应用。在本文中,我们介绍了 Whispy,这是一个旨在为 Whisper 预测模型带来实时功能的系统。经过一系列架构优化后,Whispy 能够处理实时音频流,并生成高水平、连贯的语音转录,同时还能保持较低的计算成本。我们在一个大型公开语音数据集库中评估了系统的性能,研究了 Whispy 引入的转录机制对 Whisper 输出的影响。实验结果表明,Whispy 在鲁棒性、及时性和准确性方面表现出色。
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