Speaker Overlap-aware Neural Diarization for Multi-party Meeting Analysis

Zhihao Du, Shiliang Zhang, Siqi Zheng, Zhijie Yan
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引用次数: 5

Abstract

Recently, hybrid systems of clustering and neural diarization models have been successfully applied in multi-party meeting analysis. However, current models always treat overlapped speaker diarization as a multi-label classification problem, where speaker dependency and overlaps are not well considered. To overcome the disadvantages, we reformulate overlapped speaker diarization task as a single-label prediction problem via the proposed power set encoding (PSE). Through this formulation, speaker dependency and overlaps can be explicitly modeled. To fully leverage this formulation, we further propose the speaker overlap-aware neural diarization (SOND) model, which consists of a context-independent (CI) scorer to model global speaker discriminability, a context-dependent scorer (CD) to model local discriminability, and a speaker combining network (SCN) to combine and reassign speaker activities. Experimental results show that using the proposed formulation can outperform the state-of-the-art methods based on target speaker voice activity detection, and the performance can be further improved with SOND, resulting in a 6.30% relative diarization error reduction.
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基于说话人重叠感知的多方会议分析神经分化
近年来,聚类和神经化模型的混合系统已成功地应用于多方会议分析。然而,目前的模型总是将重叠的说话人划分作为一个多标签分类问题,没有很好地考虑说话人的依赖性和重叠。为了克服这些缺点,我们通过提出的功率集编码(PSE)将重叠说话人拨号任务重新定义为单标签预测问题。通过这个公式,说话者依赖和重叠可以显式建模。为了充分利用这一公式,我们进一步提出了说话人重叠感知神经diarization (sod)模型,该模型包括一个上下文无关(CI)评分器来模拟全局说话人可判别性,一个上下文依赖评分器(CD)来模拟局部可判别性,以及一个说话人组合网络(SCN)来组合和重新分配说话人活动。实验结果表明,该方法优于现有的基于目标说话人语音活动检测的方法,并且可以进一步提高声学检测的性能,使相对拨号误差降低6.30%。
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