Li Junhua, Li Chao, Cichocki Andrzej
IEEE J Biomed Health Inform. 2017 Jan;21(1):263-271. doi: 10.1109/JBHI.2015.2491645. Epub 2015 Oct 15.
Physiological signals are often organized in the form of multiple dimensions (e.g., channel, time, task, and 3-D voxel), so it is better to preserve original organization structure when processing. Unlike vector-based methods that destroy data structure, canonical polyadic decomposition (CPD) aims to process physiological signals in the form of multiway array, which considers relationships between dimensions and preserves structure information contained by the physiological signal. Nowadays, CPD is utilized as an unsupervised method for feature extraction in a classification problem. After that, a classifier, such as support vector machine, is required to classify those features. In this manner, classification task is achieved in two isolated steps. We proposed supervised CPD by directly incorporating auxiliary label information during decomposition, by which a classification task can be achieved without an extra step of classifier training. The proposed method merges the decomposition and classifier learning together, so it reduces procedure of classification task compared with that of respective decomposition and classification. In order to evaluate the performance of the proposed method, three different kinds of signals, synthetic signal, EEG signal, and MEG signal, were used. The results based on evaluations of synthetic and real signals demonstrated that the proposed method is effective and efficient.
生理信号通常以多维形式组织(例如,通道、时间、任务和三维体素),因此在处理时最好保留原始组织结构。与破坏数据结构的基于向量的方法不同,典范多向分解(CPD)旨在以多路数组的形式处理生理信号,它考虑维度之间的关系并保留生理信号所包含的结构信息。如今,CPD在分类问题中被用作一种无监督特征提取方法。在此之后,需要一个分类器,如支持向量机,来对这些特征进行分类。通过这种方式,分类任务在两个独立的步骤中完成。我们通过在分解过程中直接纳入辅助标签信息提出了监督CPD,通过这种方法可以在无需额外进行分类器训练步骤的情况下完成分类任务。所提出的方法将分解和分类器学习合并在一起,因此与各自进行分解和分类相比,它减少了分类任务的步骤。为了评估所提出方法的性能,使用了三种不同类型的信号,即合成信号、脑电图(EEG)信号和脑磁图(MEG)信号。基于对合成信号和真实信号评估的结果表明,所提出的方法是有效且高效的。