In this paper, we propose a distributed speaker recognition method using a non-parametric speaker model and Earth Mover's Distance (EMD). In distributed speaker recognition, the quantized feature vectors are sent to a server. The Gaussian mixture model (GMM), the traditional method used for speaker recognition, is trained using the maximum likelihood approach. However, it is difficult to fit continuous density functions to quantized data. To overcome this problem, the proposed method represents each speaker model with a speaker-dependent VQ code histogram designed by registered feature vectors and directly calculates the distance between the histograms of speaker models and testing quantized feature vectors. To measure the distance between each speaker model and testing data, we use EMD which can calculate the distance between histograms with different bins. We conducted text-independent speaker identification experiments using the proposed method. Compared to results using the traditional GMM, the proposed method yielded relative error reductions of 85% for quantized data.
Cite as: Kuroiwa, S., Umeda, Y., Tsuge, S., Ren, F. (2005) Distributed speaker recognition using speaker-dependent VQ codebook and earth mover's distance. Proc. Interspeech 2005, 3085-3088, doi: 10.21437/Interspeech.2005-662
@inproceedings{kuroiwa05_interspeech, author={Shingo Kuroiwa and Yoshiyuki Umeda and Satoru Tsuge and Fuji Ren}, title={{Distributed speaker recognition using speaker-dependent VQ codebook and earth mover's distance}}, year=2005, booktitle={Proc. Interspeech 2005}, pages={3085--3088}, doi={10.21437/Interspeech.2005-662} }