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Lumen Border Detection of Intravascular Ultrasound via Denoising of Directional Wavelet Representations

机译:通过方向小波表示的降噪检测血管内超声的流明边界

摘要

In this paper, intravascular ultrasound (IVUS) grayscale images, acquired with a single-element mechanically rotating transducer, are processed with wavelet denoising and region-based segmentation to extract various layers of lumen contours and plaques. First, IVUS volumetric data is expanded on complex exponential wavelet-like basis functions, also known as Brushlets, which are well localized in time and frequency domains. Brushlets denoising have demonstrated in the past a great aptitude for denoising ultrasound data and removal of blood speckles. A region-based segmentation framework is then applied for detection of lumen border layers, which remains one of the most challenging problems in IVUS image analysis for images acquired with a single element, mechanically rotating 45 MHz transducer. We evaluated hard thresholding for Brushlet denoising, and compared segmentation results to manually traced lumen borders. We observed good agreement and suggest that the proposed algorithm has a great potential to be used as a reliable pre-processing step for accurate lumen border detection.
机译:在本文中,使用单元素机械旋转换能器获取的血管内超声(IVUS)灰度图像经过小波降噪和基于区域的分割处理,以提取管腔轮廓和斑块的各个层。首先,IVUS体积数据是在复杂的指数小波基函数(也称为Brushlets)上扩展的,这些函数在时域和频域中定位良好。过去,小刷消噪已显示出对超声数据进行消噪和去除血斑的能力。然后将基于区域的分割框架应用于管腔边界层的检测,这仍然是IVUS图像分析中最具挑战性的问题之一,用于IVUS图像分析中的单个元素(机械旋转45 MHz换能器)获取的图像。我们评估了Brushlet去噪的硬阈值,并将分割结果与手动跟踪的管腔边界进行了比较。我们观察到良好的一致性,并建议该算法具有很大的潜力,可以用作可靠的预处理步骤,以进行准确的管腔边界检测。

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