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Main Authors: Vasireddy, Siva Sai Nagender, Zhang, Chenxu, Guo, Xiaohu, Tian, Yapeng
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.19002
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author Vasireddy, Siva Sai Nagender
Zhang, Chenxu
Guo, Xiaohu
Tian, Yapeng
author_facet Vasireddy, Siva Sai Nagender
Zhang, Chenxu
Guo, Xiaohu
Tian, Yapeng
contents This paper addresses the issue of active speaker detection (ASD) in noisy environments and formulates a robust active speaker detection (rASD) problem. Existing ASD approaches leverage both audio and visual modalities, but non-speech sounds in the surrounding environment can negatively impact performance. To overcome this, we propose a novel framework that utilizes audio-visual speech separation as guidance to learn noise-free audio features. These features are then utilized in an ASD model, and both tasks are jointly optimized in an end-to-end framework. Our proposed framework mitigates residual noise and audio quality reduction issues that can occur in a naive cascaded two-stage framework that directly uses separated speech for ASD, and enables the two tasks to be optimized simultaneously. To further enhance the robustness of the audio features and handle inherent speech noises, we propose a dynamic weighted loss approach to train the speech separator. We also collected a real-world noise audio dataset to facilitate investigations. Experiments demonstrate that non-speech audio noises significantly impact ASD models, and our proposed approach improves ASD performance in noisy environments. The framework is general and can be applied to different ASD approaches to improve their robustness. Our code, models, and data will be released.
format Preprint
id arxiv_https___arxiv_org_abs_2403_19002
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Robust Active Speaker Detection in Noisy Environments
Vasireddy, Siva Sai Nagender
Zhang, Chenxu
Guo, Xiaohu
Tian, Yapeng
Multimedia
Computer Vision and Pattern Recognition
Sound
Audio and Speech Processing
This paper addresses the issue of active speaker detection (ASD) in noisy environments and formulates a robust active speaker detection (rASD) problem. Existing ASD approaches leverage both audio and visual modalities, but non-speech sounds in the surrounding environment can negatively impact performance. To overcome this, we propose a novel framework that utilizes audio-visual speech separation as guidance to learn noise-free audio features. These features are then utilized in an ASD model, and both tasks are jointly optimized in an end-to-end framework. Our proposed framework mitigates residual noise and audio quality reduction issues that can occur in a naive cascaded two-stage framework that directly uses separated speech for ASD, and enables the two tasks to be optimized simultaneously. To further enhance the robustness of the audio features and handle inherent speech noises, we propose a dynamic weighted loss approach to train the speech separator. We also collected a real-world noise audio dataset to facilitate investigations. Experiments demonstrate that non-speech audio noises significantly impact ASD models, and our proposed approach improves ASD performance in noisy environments. The framework is general and can be applied to different ASD approaches to improve their robustness. Our code, models, and data will be released.
title Robust Active Speaker Detection in Noisy Environments
topic Multimedia
Computer Vision and Pattern Recognition
Sound
Audio and Speech Processing
url https://arxiv.org/abs/2403.19002