Bellur Ashwin, Thakkar Karan, Elhilali Mounya
Electrical and Computer Engineering, Johns Hopkins University, Baltimore, USA.
EURASIP J Audio Speech Music Process. 2023;2023(1):20. doi: 10.1186/s13636-023-00286-7. Epub 2023 May 9.
The human auditory system employs a number of principles to facilitate the selection of perceptually separated streams from a complex sound mixture. The brain leverages multi-scale redundant representations of the input and uses memory (or priors) to guide the selection of a target sound from the input mixture. Moreover, feedback mechanisms refine the memory constructs resulting in further improvement of selectivity of a particular sound object amidst dynamic backgrounds. The present study proposes a unified end-to-end computational framework that mimics these principles for sound source separation applied to both speech and music mixtures. While the problems of speech enhancement and music separation have often been tackled separately due to constraints and specificities of each signal domain, the current work posits that common principles for sound source separation are domain-agnostic. In the proposed scheme, parallel and hierarchical convolutional paths map input mixtures onto redundant but distributed higher-dimensional subspaces and utilize the concept of temporal coherence to gate the selection of embeddings belonging to a target stream abstracted in memory. These explicit memories are further refined through self-feedback from incoming observations in order to improve the system's selectivity when faced with unknown backgrounds. The model yields stable outcomes of source separation for both speech and music mixtures and demonstrates benefits of explicit memory as a powerful representation of priors that guide information selection from complex inputs.
人类听觉系统运用了多种原理,以便从复杂的声音混合中挑选出在感知上分离的声流。大脑利用输入的多尺度冗余表征,并运用记忆(或先验知识)从输入混合中引导目标声音的选择。此外,反馈机制会优化记忆结构,从而在动态背景中进一步提高特定声音对象的选择性。本研究提出了一个统一的端到端计算框架,该框架模仿这些原理用于语音和音乐混合的声源分离。虽然由于每个信号域的限制和特性,语音增强和音乐分离问题通常是分别处理的,但当前研究认为声源分离的通用原理与信号域无关。在所提出的方案中,并行和分层卷积路径将输入混合映射到冗余但分布式的高维子空间,并利用时间相干概念来控制对属于记忆中抽象出的目标流的嵌入的选择。这些明确的记忆通过来自传入观测的自反馈进一步优化,以便在面对未知背景时提高系统的选择性。该模型对语音和音乐混合都产生了稳定的声源分离结果,并证明了明确记忆作为一种强大的先验知识表征的好处,这种先验知识可引导从复杂输入中选择信息。