Li Yongming, Zhang Xinyue, Wang Pin, Zhang Xiaoheng, Liu Yuchuan
School of Microelectronics and Communication Engineering, Chongqing University, Chongqing, 400030 China.
Chongqing Radio and TV University, Chongqing, 400052 China.
Neural Comput Appl. 2021;33(15):9733-9750. doi: 10.1007/s00521-021-05741-0. Epub 2021 Feb 9.
Speech diagnosis of Parkinson's disease (PD) as a non-invasive and simple diagnosis method is particularly worth exploring. However, the number of samples of speech-based PD is relatively small, and there exist discrepancies in the distribution between subjects. In order to solve the two problems, a novel unsupervised two-step sparse transfer learning is proposed in this paper to tackle with PD speech diagnosis. In the first step, convolution sparse coding with the coordinate selection of samples and features is designed to learn speech structure from the source domain to replenish sample information of the target domain. In the second step, joint local structure distribution alignment is designed to maintain the neighbor relationship between the respective samples of the training set and test set, and reduce the distribution difference between the two domains at the same time. Two representative public PD speech datasets and one real-world PD speech dataset were exploited to verify the proposed method on PD speech diagnosis. Experimental results demonstrate that each step of the proposed method has a positive effect on the PD speech classification results, and it also delivers superior performance over the existing relative methods.
作为一种非侵入性且简单的诊断方法,帕金森病(PD)的语音诊断特别值得探索。然而,基于语音的帕金森病样本数量相对较少,且不同受试者之间的分布存在差异。为了解决这两个问题,本文提出了一种新颖的无监督两步稀疏迁移学习方法来处理帕金森病语音诊断。第一步,设计具有样本和特征坐标选择的卷积稀疏编码,从源域学习语音结构以补充目标域的样本信息。第二步,设计联合局部结构分布对齐,以保持训练集和测试集各自样本之间的邻域关系,同时减少两个域之间的分布差异。利用两个具有代表性的公开帕金森病语音数据集和一个真实世界的帕金森病语音数据集来验证所提出的帕金森病语音诊断方法。实验结果表明,该方法的每一步对帕金森病语音分类结果都有积极影响,并且与现有的相关方法相比也具有优越的性能。