首页> 外文会议>Biomedical Imaging (ISBI), 2012 9th IEEE International Symposium on >Segmentation-free and multiscale-free extraction of medial information using Gradient Vector Flow — Application to vascular structures
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Segmentation-free and multiscale-free extraction of medial information using Gradient Vector Flow — Application to vascular structures

机译:使用梯度向量流的无分割和无刻度的医学信息提取—在血管结构中的应用

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Gradient Vector Flow has become a popular method to recover medial information in medical imaging, in particular for vessels centerline extraction. This renewed interest has been motivated by its ability to process gray-scale images without prior segmentation. However, another interesting property lies in the diffusion process used to solve the underlying variational problem. We propose a method to recover scale information in the context of vascular structures extraction, relying on analytical properties of the Gradient Vector Flow only, with no multiscale analysis. Through simple one-dimensional considerations, we demonstrate the ability of our approach to estimate the radii of the vessels with an error of 10% only in the presence of noise and less than 3% without noise. Our approach is evaluated on convolved bar-like templates and is illustrated on 2D X-ray angiographic images.
机译:梯度矢量流已成为一种在医学成像中恢复中间信息的流行方法,特别是对于血管中心线提取。这种新的兴趣是由其无需事先分割即可处理灰度图像的能力所激发的。但是,另一个有趣的特性在于用于解决潜在变体问题的扩散过程。我们提出一种仅在梯度矢量流的分析属性下,在血管结构提取的背景下恢复尺度信息的方法,而无需多尺度分析。通过简单的一维考虑,我们证明了我们的方法能够仅在有噪声的情况下估计船只半径的误差为10%,而在无噪声的情况下估计误差为3%的能力。我们的方法在卷积的条状模板上进行了评估,并在2D X射线血管造影图像上得到了说明。

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