Denoising and Raw-waveform Networks for Weakly-Supervised Gender Identification on Noisy Speech
This paper presents a raw-waveform neural network and uses it along with a denoising network for clustering in weakly supervised learning scenarios under extreme noise conditions. Specifically, we consider language independent Automatic Gender Recognition (AGR) on a set of varied noise conditions and Signal to Noise Ratios (SNRs). We formulate the denoising problem as a source separation task and train the system using a discriminative criterion in order to enhance output SNRs. A denoising Recurrent Neural Network (RNN) is first trained on a small subset (roughly one-fifth) of the data for learning a speech specific mask. The denoised speech signal is then directly fed as input to a raw-waveform convolutional neural network (CNN) trained with denoised speech. We evaluate the standalone performance of denoiser in terms of various signal-to-noise measures and discuss its contribution towards robust AGR. An absolute improvement of 11.06% and 13.33% is achieved by the combined pipeline over the i-vector SVM baseline system for 0 dB and -5 dB SNR conditions, respectively. We further analyse the information captured by the first CNN layer in both noisy and denoised speech.
WOS:000465363900062
2018-01-01
978-1-5108-7221-9
Baixas
Interspeech
292
296
REVIEWED
Event name | Event place | Event date |
Hyderabad, INDIA | Aug 02-Sep 06, 2018 | |