Featured circular profile for vessel thresholding

N. Lu, Hongyu Miao
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引用次数: 1

Abstract

To analyze the characteristics of the blood vessels quantitatively is of great importance to the diagnosis of different diseases, e.g., stenosis, diabetic retinopathy, tumor and so on. However, the occurrence of imaging noise or illumination variation may include difficulty for image analysis, especially for accurate quantitative analysis. Therefore, more efficient algorithms for vessel image thresholding, segmentation or extraction have been studied. Nevertheless, these methods may still fail entirely in case of images with large noise or structural noise (such as spots that obscure and/or are brighter than vessels). To improve the algorithm performance on these issues, we propose a novel thresholding algorithm for vascular images by probing the polarity in the circular profiles (PCP) of image pixels. This can robustly distinguish tube-like objects from both cloud-like contaminations and structural noise. Extensive simulation studies based on multiple evaluation criteria suggest that the PCP algorithm typically has a superior performance over other representative approaches. Finally, we also demonstrate the satisfactory performance of the PCP method on real image data.
具有圆形轮廓的容器阈值
定量分析血管的特征对不同疾病的诊断具有重要意义,如狭窄、糖尿病视网膜病变、肿瘤等。然而,成像噪声或光照变化的出现可能会给图像分析带来困难,特别是对准确的定量分析。因此,研究了更有效的血管图像阈值分割或提取算法。然而,这些方法在具有大噪声或结构噪声的图像(例如模糊和/或比血管更亮的斑点)的情况下仍然可能完全失败。为了提高算法在这些问题上的性能,我们提出了一种新的血管图像阈值算法,该算法通过探测图像像素的圆形轮廓(PCP)中的极性。这可以从云状污染物和结构噪声中强有力地区分管状物体。基于多个评价标准的大量仿真研究表明,PCP算法通常比其他代表性方法具有更好的性能。最后,我们还在实际图像数据上验证了PCP方法令人满意的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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