SDLGASSep 30, 2019

AV Speech Enhancement Challenge using a Real Noisy Corpus

arXiv:1910.00424v14 citations
Originality Synthesis-oriented
AI Analysis

It addresses the problem of speech enhancement in noisy environments for researchers and practitioners by offering a new benchmark, though it is incremental as it builds on existing methods with a new dataset.

The paper introduces the first audio-visual speech enhancement challenge using a real noisy corpus (ASPIRE), providing baseline results from training a deep neural network on synthetic data and testing on ASPIRE, with subjective evaluations of five algorithms showing competitive performance.

This paper presents, a first of its kind, audio-visual (AV) speech enhacement challenge in real-noisy settings. A detailed description of the AV challenge, a novel real noisy AV corpus (ASPIRE), benchmark speech enhancement task, and baseline performance results are outlined. The latter are based on training a deep neural architecture on a synthetic mixture of Grid corpus and ChiME3 noises (consisting of bus, pedestrian, cafe, and street noises) and testing on the ASPIRE corpus. Subjective evaluations of five different speech enhancement algorithms (including SEAGN, spectrum subtraction (SS) , log-minimum mean-square error (LMMSE), audio-only CochleaNet, and AV CochleaNet) are presented as baseline results. The aim of the multi-modal challenge is to provide a timely opportunity for comprehensive evaluation of novel AV speech enhancement algorithms, using our new benchmark, real-noisy AV corpus and specified performance metrics. This will promote AV speech processing research globally, stimulate new ground-breaking multi-modal approaches, and attract interest from companies, academics and researchers working in AV speech technologies and applications. We encourage participants (through a challenge website sign-up) from both the speech and hearing research communities, to benefit from their complementary approaches to AV speech in noise processing.

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