Voice Activity Detection for Transient Noisy Environment Based on Diffusion Nets
Amir Ivry, Baruch Berdugo, Israel Cohen

TL;DR
This paper introduces a diffusion nets-based neural network for voice activity detection in transient noisy environments, improving accuracy, robustness, and real-time performance over existing methods.
Contribution
It proposes a novel deep encoder-decoder architecture utilizing diffusion maps for better separation of speech and non-speech frames in noisy conditions.
Findings
Enhanced detection accuracy compared to existing methods
Robustness to transient and stationary noise environments
Real-time implementation capability
Abstract
We address voice activity detection in acoustic environments of transients and stationary noises, which often occur in real life scenarios. We exploit unique spatial patterns of speech and non-speech audio frames by independently learning their underlying geometric structure. This process is done through a deep encoder-decoder based neural network architecture. This structure involves an encoder that maps spectral features with temporal information to their low-dimensional representations, which are generated by applying the diffusion maps method. The encoder feeds a decoder that maps the embedded data back into the high-dimensional space. A deep neural network, which is trained to separate speech from non-speech frames, is obtained by concatenating the decoder to the encoder, resembling the known Diffusion nets architecture. Experimental results show enhanced performance compared to…
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Taxonomy
MethodsDiffusion
