Multichannel Compressive Sensing MRI Using Noiselet Encoding
Kamlesh Pawar, Gary F. Egan, Jingxin Zhang

TL;DR
This paper introduces noiselet encoding in multichannel compressive sensing MRI to enhance incoherence and RIP, leading to improved image quality and higher acceleration factors compared to traditional Fourier encoding.
Contribution
The paper proposes using noiselet bases as measurement matrices in CS-MRI, combined with multichannel acquisition, to improve incoherence, RIP, and reconstruction performance.
Findings
Multichannel noiselet matrices have better RIP than Fourier matrices.
Noiselet encoding outperforms Fourier encoding in image resolution preservation.
Higher acceleration factors are achievable with noiselet encoding.
Abstract
The incoherence between measurement and sparsifying transform matrices and the restricted isometry property (RIP) of measurement matrix are two of the key factors in determining the performance of compressive sensing (CS). In CS-MRI, the randomly under-sampled Fourier matrix is used as the measurement matrix and the wavelet transform is usually used as sparsifying transform matrix. However, the incoherence between the randomly under-sampled Fourier matrix and the wavelet matrix is not optimal, which can deteriorate the performance of CS-MRI. Using the mathematical result that noiselets are maximally incoherent with wavelets, this paper introduces the noiselet unitary bases as the measurement matrix to improve the incoherence and RIP in CS-MRI, and presents a method to design the pulse sequence for the noiselet encoding. This novel encoding scheme is combined with the multichannel…
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