Li Haibo
Nanjing University of Posts and Telecommunications
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Publication
Featured researches published by Li Haibo.
The Journal of China Universities of Posts and Telecommunications | 2017
Xu Qinyu; Lu Guanming; Yan Jingjie; Li Haibo; Cheng Xiao
Abstract Voice conversion (VC) based on Gaussian mixture model (GMM) is the most classic and common method which converts the source spectrum to target spectrum. However this method is prone to over-fitting because of its frame-by-frame conversion. The VC with non-negative matrix factorization (NMF) is presented in this paper, which can keep spectrum from over-fitting by adjusting the size of basis vector (dictionary). In order to realize the non-linear mapping better, kernel NMF (KNMF) is adopted to achieve spectrum mapping. In addition, to increase the accuracy of conversion, KNMF combined with GMM (GKNMF) is also introduced into VC. In the end, KNMF, GKNMF, GMM, principal component regression (PCR), PCR combined with GMM (GPCR), partial least square regression (PLSR), NMF correlation-based frequency warping (NMF-CFW) and deep neural network (DNN) methods are compared with each other. The proposed GKNMF gets better performance in both objective evaluation and subjective evaluation.
Archive | 2015
Zhu Hu; Deng Lizhen; Zhou Liang; Cheng Zhao; Li Meng; Li Haibo; Lu Guanming; Xie Shipeng
Archive | 2015
Zhu Hu; Deng Lizhen; Zhou Liang; Li Haibo
Archive | 2015
Xie Shipeng; Ding Mingchen; Li Haibo; Ge Qi; Yan Ruiju
Archive | 2017
Wang Yinhao; Hu Jing; Cheng Xiaogang; Xie Shipeng; Xu Yanli; Lyu Hongjun; Li Haibo
Archive | 2017
Guo Shuaijie; Lu Guanming; Yan Jingjie; Li Haibo
Archive | 2017
Hu Jing; Qin Tingting; Cheng Xiaogang; Shao Wenze; Cheng Yun; Li Dezhi; Li Haibo
Archive | 2017
Cheng Xiaogang; Song Limin; Li Zhi; Shao Wenze; Xie Shipeng; Li Haibo
Archive | 2017
Xu Yanli; Li Haibo; Cheng Xiaogang; Shao Wenze; Lyu Hongjun
Archive | 2017
Liu Yi; Lu Guanming; Li Xiaonan; Yan Jingjie; Li Haibo