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Gaussian function / Image processing / Statistics / Nonparametric statistics / Regression analysis / Neuroscience / Neuroimaging / Mathematical analysis / Functional magnetic resonance imaging / Smoothing / Kernel smoother / Gaussian blur
Date: 2013-01-11 21:03:37
Gaussian function
Image processing
Statistics
Nonparametric statistics
Regression analysis
Neuroscience
Neuroimaging
Mathematical analysis
Functional magnetic resonance imaging
Smoothing
Kernel smoother
Gaussian blur

www.elsevier.com/locate/ynimg NeuroImage – 1103 Smoothing and cluster thresholding for cortical surface-based group analysis of fMRI data Donald J. Hagler Jr., ⁎ Ayse Pinar Saygin, and Martin I. Sereno

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Source URL: sayginlab.ucsd.edu

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