SDASJun 5, 2021

Lightweight Dual-channel Target Speaker Separation for Mobile Voice Communication

arXiv:2106.02934v1
Originality Incremental advance
AI Analysis

This work addresses the need for efficient speaker separation on mobile devices, offering an incremental improvement with a new dataset and model.

The paper tackles target speaker separation for mobile voice communication by creating a dual-channel dataset, LibriPhone, and proposing a lightweight LSTM-Former model, which shows a 25% relative improvement over a single-channel version.

Nowadays, there is a strong need to deploy the target speaker separation (TSS) model on mobile devices with a limitation of the model size and computational complexity. To better perform TSS for mobile voice communication, we first make a dual-channel dataset based on a specific scenario, LibriPhone. Specifically, to better mimic the real-case scenario, instead of simulating from the single-channel dataset, LibriPhone is made by simultaneously replaying pairs of utterances from LibriSpeech by two professional artificial heads and recording by two built-in microphones of the mobile. Then, we propose a lightweight time-frequency domain separation model, LSTM-Former, which is based on the LSTM framework with source-to-noise ratio (SI-SNR) loss. For the experiments on Libri-Phone, we explore the dual-channel LSTMFormer model and a single-channel version by a random single channel of Libri-Phone. Experimental result shows that the dual-channel LSTM-Former outperforms the single-channel LSTMFormer with relative 25% improvement. This work provides a feasible solution for the TSS task on mobile devices, playing back and recording multiple data sources in real application scenarios for getting dual-channel real data can assist the lightweight model to achieve higher performance.

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