Banerjee Monami, Chakraborty Rudrasis, Ofori Edward, Vaillancourt David, Vemuri Baba C
Department of CISE, University of Florida, Gainesville, Florida, USA.
Department of Applied Physiology and Kinesiology, University of Florida, Florida, USA.
Med Image Comput Comput Assist Interv. 2015 Oct;9349:719-727. doi: 10.1007/978-3-319-24553-9_88. Epub 2015 Nov 18.
Regression in its most common form where independent and dependent variables are in ℝ is a ubiquitous tool in Sciences and Engineering. Recent advances in Medical Imaging has lead to a wide spread availability of manifold-valued data leading to problems where the independent variables are manifold-valued and dependent are real-valued or vice-versa. The most common method of regression on a manifold is the geodesic regression, which is the counterpart of linear regression in Euclidean space. Often, the relation between the variables is highly complex, and existing most commonly used geodesic regression can prove to be inaccurate. Thus, it is necessary to resort to a non-linear model for regression. In this work we present a novel Kernel based non-linear regression method when the mapping to be estimated is either from → ℝ or ℝ → , where M is a Riemannian manifold. A key advantage of this approach is that there is no requirement for the manifold-valued data to necessarily inherit an ordering from the data in ℝ . We present several synthetic and real data experiments along with comparisons to the state-of-the-art geodesic regression method in literature and thus validating the effectiveness of the proposed algorithm.
回归在其最常见的形式中,即自变量和因变量都在实数域ℝ中,是科学和工程领域中普遍使用的工具。医学成像的最新进展导致了多值数据的广泛可得性,从而产生了自变量为多值而因变量为实值,或者反之亦然的问题。在流形上进行回归的最常见方法是测地线回归,它是欧几里得空间中线性回归的对应方法。通常,变量之间的关系非常复杂,现有的最常用的测地线回归可能会被证明是不准确的。因此,有必要采用非线性模型进行回归。在这项工作中,当要估计的映射是从M→ℝ或ℝ→M时,我们提出了一种基于核的新型非线性回归方法,其中M是一个黎曼流形。这种方法的一个关键优点是,不需要多值数据必然从实数域ℝ中的数据继承顺序。我们展示了几个合成数据和真实数据实验,并与文献中最先进的测地线回归方法进行了比较,从而验证了所提算法的有效性。