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Frequency-constrained robust principal component analysis: a sparse representation approach to segmentation of dynamic features in optical coherence tomography imaging

机译:频率受限的鲁棒主成分分析:一种稀疏表示方法用于光学相干断层扫描成像中的动态特征分割

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摘要

Sparse representation theory is an exciting area of research with recent applications in medical imaging and detection, segmentation, and quantitative analysis of biological processes. We present a variant on the robust-principal component analysis (RPCA) algorithm, called frequency constrained RPCA (FC-RPCA), for selectively segmenting dynamic phenomena that exhibit spectra within a user-defined range of frequencies. The algorithm lacks subjective parameter tuning and demonstrates robust segmentation in datasets containing multiple motion sources and high amplitude noise. When tested on 17 ex-vivo, time lapse optical coherence tomography (OCT) B-scans of human ciliated epithelium, segmentation accuracies ranged between 91–99% and consistently out-performed traditional RPCA.
机译:稀疏表示理论是令人兴奋的研究领域,最近在医学成像和检测,分割以及生物过程的定量分析中得到了应用。我们提出了一种鲁棒性主成分分析(RPCA)算法的变体,称为频率受限RPCA(FC-RPCA),用于选择性地分割动态现象,这些现象表现出用户定义的频率范围内的频谱。该算法缺乏主观参数调整功能,并且在包含多个运动源和高振幅噪声的数据集中显示出可靠的分割效果。在人纤毛上皮的17种离体,延时光学相干断层扫描(OCT)B扫描上进行测试时,分割准确率在91–99%之间,并且始终优于传统RPCA。

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