CB-27 Speech Enhancement with A Novel Deep-learning-based Model
SCURS Disciplines
Computer Sciences
Document Type
Poster Presentation
Abstract
Speech enhancement is a crucial aspect of audio signal processing, aimed at improving speech quality and intelligibility in noisy environments. Deep learning-based speech enhancement models have shown strong performance in noise reduction tasks. In this study, we extend DeepFilterNet, a speech enhancement model, by integrating AI-driven techniques to further refine speech quality. Our goal is to enhance noise suppression, improve speech clarity, and boost overall performance compared to the baseline model. The significance of this research lies in its contribution to speech enhancement, a crucial aspect of audio signal processing that impacts applications in telecommunications, hearing aids, voice assistants, and human-computer interaction. By refining DeepFilterNet with AI-driven techniques, this study aims to improve noise suppression and speech clarity, making speech more intelligible in challenging environments.
Keywords
Speech enhancement, machine learning, deep neural network
Start Date
11-4-2025 9:30 AM
Location
University Readiness Center Greatroom
End Date
11-4-2025 11:30 AM
CB-27 Speech Enhancement with A Novel Deep-learning-based Model
University Readiness Center Greatroom
Speech enhancement is a crucial aspect of audio signal processing, aimed at improving speech quality and intelligibility in noisy environments. Deep learning-based speech enhancement models have shown strong performance in noise reduction tasks. In this study, we extend DeepFilterNet, a speech enhancement model, by integrating AI-driven techniques to further refine speech quality. Our goal is to enhance noise suppression, improve speech clarity, and boost overall performance compared to the baseline model. The significance of this research lies in its contribution to speech enhancement, a crucial aspect of audio signal processing that impacts applications in telecommunications, hearing aids, voice assistants, and human-computer interaction. By refining DeepFilterNet with AI-driven techniques, this study aims to improve noise suppression and speech clarity, making speech more intelligible in challenging environments.