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Cover tree compressed sensing for fast mr fingerprint recovery

机译:覆盖树压缩感应可快速恢复先生指纹

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We adopt a data structure in the form of cover trees and iteratively apply approximate nearest neighbour (ANN) searches for fast compressed sensing reconstruction of signals living on discrete smooth manifolds. Leveraging on the recent stability results for the inexact Iterative Projected Gradient (IPG) algorithm and by using the cover tree's ANN searches, we decrease the projection cost of the IPG algorithm to be logarithmically growing with data population for low dimensional smooth manifolds. We apply our results to quantitative MRI compressed sensing and in particular within the Magnetic Resonance Fingerprinting (MRF) framework. For a similar (or sometimes better) reconstruction accuracy, we report 2-3 orders of magnitude reduction in computations compared to the standard iterative method, which uses brute-force searches.
机译:我们采用覆盖树形式的数据结构,并迭代地应用近似最近邻(ANN)搜索,以对生活在离散光滑流形上的信号进行快速压缩感知重建。利用不精确的迭代投影梯度(IPG)算法的最新稳定性结果,并通过使用覆盖树的ANN搜索,我们降低了IPG算法的投影成本,该成本随着对数维低维流形的数据填充呈对数增长。我们将结果应用于定量MRI压缩感测,尤其是在磁共振指纹(MRF)框架内。为了达到类似(或有时更好)的重建精度,与使用蛮力搜索的标准迭代方法相比,我们报告了2-3个数量级的计算减少。

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