The combination of a deep neural network (DNN) -based speech enhancement (SE) front-end and an automatic speech recognition (ASR) back-end is a widely used approach to implement overlapping speech recognition. However, the SE front-end generates processing artifacts that can degrade the ASR performance. We previously found that such performance degradation can occur even under fully overlapping conditions, depending on the signal-to-interference ratio (SIR) and signal-to-noise ratio (SNR). To mitigate the degradation, we introduced a rule-based method to switch the ASR input between the enhanced and observed signals, which showed promising results. However, the rule's optimality was unclear because it was heuristically designed and based only on SIR and SNR values. In this work, we propose a DNN-based switching method that directly estimates whether ASR will perform better on the enhanced or observed signals. We also introduce soft-switching that computes a weighted sum of the enhanced and observed signals for ASR input, with weights given by the switching model's output posteriors. The proposed learning-based switching showed performance comparable to that of rule-based oracle switching. The soft-switching further improved the ASR performance and achieved a relative character error rate reduction of up to 23 % as compared with the conventional method.
翻译:深神经网络(DNN)基于语音增强的前端和自动语音识别(ASR)后端的组合,是一种广泛使用的方法,用于实施重复的语音识别;然而,SE前端生成了可降低ASR性能的加工工艺品,而SE前端生成了可降低ASR性能的加工工艺品;我们以前曾发现,这种性能退化甚至在完全重叠的条件下也可能发生,这取决于信号对干涉比率(SIR)和信号对噪音比率(SNR),为缓解这种退化,我们采用了基于规则的方法,将ASR的强化和观测信号的输入转换为显示有希望效果的强化和观察到信号之间的输入。然而,该规则的最佳性能并不明确,因为它是超常设计的,而且仅以SIR和SNR值值为基础。在这项工作中,我们提出了基于DNN的转换方法,即直接估计ASR在增强或观察到的信号上是否更好表现。我们还引入软抽动,这可以计算出ASR投入的强化和观察到的信号的加权和加权,而转换模型的后方表示有希望的结果。拟议基于学习的转换显示软性转换与常规性压的相对性变换法,将A-A-递减率与常规性变换为比。