Exploiting Attention-based Sequence-to-Sequence Architectures for Sound Event Localization

C. Schymura, Tsubasa Ochiai, Marc Delcroix, K. Kinoshita, T. Nakatani, S. Araki, D. Kolossa
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引用次数: 8

Abstract

Sound event localization frameworks based on deep neural networks have shown increased robustness with respect to reverberation and noise in comparison to classical parametric approaches. In particular, recurrent architectures that incorporate temporal context into the estimation process seem to be well-suited for this task. This paper proposes a novel approach to sound event localization by utilizing an attention-based sequence-to-sequence model. These types of models have been successfully applied to problems in natural language processing and automatic speech recognition. In this work, a multi-channel audio signal is encoded to a latent representation, which is subsequently decoded to a sequence of estimated directions-of-arrival. Herein, attentions allow for capturing temporal dependencies in the audio signal by focusing on specific frames that are relevant for estimating the activity and direction-of-arrival of sound events at the current time-step. The framework is evaluated on three publicly available datasets for sound event localization. It yields superior localization performance compared to state-of-the-art methods in both anechoic and reverberant conditions.
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利用基于注意力的序列到序列架构进行声音事件定位
与经典参数方法相比,基于深度神经网络的声音事件定位框架在混响和噪声方面显示出更高的鲁棒性。特别是,将时间上下文合并到评估过程中的循环架构似乎非常适合这项任务。本文提出了一种基于注意力的序列到序列模型的声音事件定位方法。这些类型的模型已经成功地应用于自然语言处理和自动语音识别问题。在这项工作中,将多通道音频信号编码为潜在表示,随后将其解码为估计到达方向的序列。在此,通过关注与估计当前时间步长声音事件的活动和到达方向相关的特定帧,可以捕获音频信号中的时间依赖性。该框架在三个公开可用的声音事件定位数据集上进行了评估。与最先进的方法相比,它在消声和混响条件下都具有优越的定位性能。
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