Compressed Sensing with Transform Domain Dependencies for Coronary MRI
نویسندگان
چکیده
Fig 3: Comparison of BLS-GSM CS and l1 norm CS for imaging of right coronary artery. Fig. 1: a) Wavelet coefficients of a 2D slice of a coronary image. b) Random permutation of the same coefficients shown in (a). Both data have equivalent lp norm, which suggests CS lp norm regularizers do not take into account the clustering and correlation of information in the transform domain. Compressed Sensing with Transform Domain Dependencies for Coronary MRI
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