Support vector clustering (SVC) has proven an efficient algorithm for clustering of noisy and high-dimensional data sets,
with applications within many fields of research. An inherent problem, however, has been setting the parameters of the SVC
algorithm. Using the recent emergence of a method for calculating the entire regularization path of the support vector domain
description, we propose a fast method for robust pseudo-hierarchical support vector clustering (HSVC). The method is demonstrated
to work well on generated data, as well as for detecting ischemic segments from multidimensional myocardial perfusion magnetic
resonance imaging data, giving robust results while drastically reducing the need for parameter estimation.