“…Inspired by the successes of using sparse representation in pattern recognition (Mairal et al, 2009; Kreutz-Delgado et al, 2003; Aharon et al, 2006; Lewicki and Sejnowski 2000) and in brain functional imaging analysis (Lee et al, 2011; Li et al, 2012; Yamashita et al, 2008; Li et al, 2009; Lv et al, 2014a; Lv et al, 2014b), in this paper, we propose a novel two-stage sparse representation framework to obtain a groupwise characterization of fMRI signals obtained during various tasks (or during resting-state), which have the capability of addressing the abovementioned three challenges. Specifically, for the first challenge, the sparse-constrained dictionary learning method has been algorithmically shown to be capable of identifying the representative components from the given fMRI dataset as the activation maps from the fMRI study are usually with little overlapping ( Daubechies et al, 2009).…”