Asaf Rendel, Raul Fernandez, et al.
ICASSP 2016
With the rise of voice-activated applications, the need for speaker recognition is rapidly increasing. The x-vector, an embedding approach based on a deep neural network (DNN), is considered the state-of-the-art when proper end-to-end training is not feasible. However, the accuracy significantly decreases when recording conditions (noise, sample rate, etc.) are mismatched, either between the x-vector training data and the target data or between enrollment and test data. We introduce the Siamese x-vector Reconstruction (SVR) for domain adaptation. We reconstruct the embedding of a higher quality signal from a lower quality counterpart using a lean auxiliary Siamese DNN. We evaluate our method on several mismatch scenarios and demonstrate significant improvement over the baseline.
Asaf Rendel, Raul Fernandez, et al.
ICASSP 2016
Takashi Fukuda, Samuel Thomas
INTERSPEECH 2020
Zvi Kons, Hagai Aronowitz
INTERSPEECH 2013
Alexandra König, Aharon Satt, et al.
Current Alzheimer Research