Blind
Compressive Sensing Dynamic MRI with Sparse Dictionaries
Sajan Goud Lingala1,
Mathews Jacob1
1The
University of Iowa, Iowa city, IA, United States
We propose an sparse blind compressivealgorithm to learn dictionary atoms that
are constrained to be sparse for accelerated dynamic MRI reconstruction. The
sparsity promoting norm on the dictionary atoms penalizes the learning of noisy
basis functions. We demonstrate through examples on free breathing cardiac
data, that the proposed scheme results in superior image quality in
comparison tothe conventional blind
CS scheme and methods with fixed dictionaries.