In this paper, we consider data acquired by multimodal sensors capturing complementary aspects and features of a measured phenomenon. We focus on a scenario in which the measurements share mutual sources of variability but might also be contaminated by other measurement-specific sources such as interferences or noise. Our approach combines manifold learning, which is a class of nonlinear data-driven dimension reduction methods, with the well-known Riemannian geometry of symmetric and positive-definite (SPD) matrices. Manifold learning typically includes the spectral analysis of a kernel built from the measurements. Here, we take a different approach, utilizing the Riemannian geometry of the kernels. In particular, we study the way the spectrum of the kernels changes along geodesic paths on the manifold of SPD matrices. We show that this change enables us, in a purely unsupervised manner, to derive a compact, yet informative, description of the relations between the measurements, in terms of their underlying components. Based on this result, we present new algorithms for extracting the common latent components and for identifying common and measurement-specific components.
翻译:在本文中,我们考虑了多式联运传感器获得的数据,这些数据反映了所测量现象的互补方面和特征。我们侧重于一种假设情况,即测量结果具有相互的变异性,但也可能受到干扰或噪音等其他特定测量来源的污染。我们的方法包括多种学习,这是一种非线性数据驱动的减少维度方法,与众所周知的对称和正定义矩阵(SPD)的里曼式几何方法相融合。 Meniclle 学习通常包括对测量结果形成的内核的光谱分析。在这里,我们采用不同的方法,利用里伊曼式内核的几何法。特别是,我们研究了在SPD矩阵的方位上沿地深线路径变化的内核频谱。我们表明,这种变化使我们能够以一种完全不受监督的方式,就测量结果的基本组成部分,对测量结果之间的关系进行压缩,但又提供信息。我们根据这一结果提出了新的算法,用于提取共同的潜值组成部分,并查明共同的和测量具体组成部分。