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Line Detection as an Inverse Problem: Application to Lung Ultrasound Imaging

机译:线检测是一个反问题:在肺超声成像中的应用

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摘要

This paper presents a novel method for line restoration in speckle images. We address this as a sparse estimation problem using both convex and non-convex optimization techniques based on the Radon transform and sparsity regularization. This breaks into subproblems, which are solved using the alternating direction method of multipliers, thereby achieving line detection and deconvolution simultaneously. We include an additional deblurring step in the Radon domain via a total variation blind deconvolution to enhance line visualization and to improve line recognition. We evaluate our approach on a real clinical application: the identification of B-lines in lung ultrasound images. Thus, an automatic B-line identification method is proposed, using a simple local maxima technique in the Radon transform domain, associated with known clinical definitions of line artefacts. Using all initially detected lines as a starting point, our approach then differentiates between B-lines and other lines of no clinical significance, including Z-lines and A-lines. We evaluated our techniques using as ground truth lines identified visually by clinical experts. The proposed approach achieves the best B-line detection performance as measured by the F score when a non-convex regularization is employed for both line detection and deconvolution. The F scores as well as the receiver operating characteristic (ROC) curves show that the proposed approach outperforms the state-of-the-art methods with improvements in B-line detection performance of 54%, 40%, and 33% for , , and , respectively, and of 24% based on ROC curve evaluations.
机译:本文提出了一种新的斑点图像中线条恢复的方法。我们将这作为基于Radon变换和稀疏正则化的凸和非凸优化技术来解决的稀疏估计问题。这分为子问题,可以使用乘法器的交替方向方法解决这些子问题,从而同时实现线检测和反卷积。我们通过整体变化盲解卷积在Radon域中包括一个附加的去模糊步骤,以增强线的可视化效果并改善线的识别能力。我们在实际的临床应用中评估我们的方法:在肺部超声图像中识别B线。因此,提出了一种自动的B线识别方法,该方法使用Radon变换域中的简单局部最大值技术与已知的线伪像临床定义相关联。以所有最初检测到的品系为起点,我们的方法然后区分B品系和其他无临床意义的品系,包括Z品系和A品系。我们使用临床专家通过视觉识别的地面真相线评估了我们的技术。当将非凸正则化用于行检测和去卷积时,所提出的方法可实现最佳的B行检测性能,该性能由F分数衡量。 F分数和接收器工作特性(ROC)曲线表明,所提出的方法优于最新方法,其B线检测性能分别提高了54%,40%和33%。和,分别为24%和基于ROC曲线评估。

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