通过自监督模型反思语音处理中的 Mamba

Xiangyu Zhang, Jianbo Ma, Mostafa Shahin, Beena Ahmed, Julien Epps
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摘要

基于 Mamba 的模型在计算机视觉、自然语言处理和语音处理等任务中表现出色。然而,在语音处理领域,基于 Mamba 的模型在不同任务中的表现各不相同。例如,在语音增强和频谱重建等任务中,Mamba 模型在独立使用时表现出色。然而,在语音识别等任务中,需要额外的模块才能超越基于注意力的模型。我们提出的假设是,基于 Mamba 的模型在语音处理的 "重建 "任务中表现出色。然而,对于语音识别等 "分类任务",则需要额外的模块来完成 "重构 "步骤。为了验证我们的假设,我们从信息论的角度分析了之前基于 Mamba 的语音模型。此外,我们还在研究中利用了 HuBERT 的特性。我们训练了一个基于 Mamba 的 HuBERT 模型,其互信息模式和模型的性能指标证实了我们的假设。
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Rethinking Mamba in Speech Processing by Self-Supervised Models
The Mamba-based model has demonstrated outstanding performance across tasks in computer vision, natural language processing, and speech processing. However, in the realm of speech processing, the Mamba-based model's performance varies across different tasks. For instance, in tasks such as speech enhancement and spectrum reconstruction, the Mamba model performs well when used independently. However, for tasks like speech recognition, additional modules are required to surpass the performance of attention-based models. We propose the hypothesis that the Mamba-based model excels in "reconstruction" tasks within speech processing. However, for "classification tasks" such as Speech Recognition, additional modules are necessary to accomplish the "reconstruction" step. To validate our hypothesis, we analyze the previous Mamba-based Speech Models from an information theory perspective. Furthermore, we leveraged the properties of HuBERT in our study. We trained a Mamba-based HuBERT model, and the mutual information patterns, along with the model's performance metrics, confirmed our assumptions.
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