Tubular objects network detection from 3D images

Nicolas Flasque, M. Desvignes, M. Revenu, J. Constans
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引用次数: 2

Abstract

We present an approach to the tree representation of a tubular object network. The full 3D tracking algorithm for a single tubular structure is detailed. Detection of bifurcations by a connectivity approach is then exposed. We show subvoxel accuracy and reliable orientation estimation for the tracking process on synthetic images. Bifurcations are also well detected on a complex synthetic image. Finally, applications of this method to real 3D medical images are shown. The method is particularly suited for processing magnetic resonance angiography of the brain and neck.
三维图像中管状物体的网络检测
我们提出了一种管状对象网络的树表示方法。详细介绍了单管结构的全三维跟踪算法。然后公开通过连接方法检测分叉。我们展示了亚体素精度和可靠的方向估计对合成图像的跟踪过程。在复杂的合成图像上也可以很好地检测到分岔。最后,给出了该方法在实际三维医学图像中的应用。该方法特别适合于处理脑和颈部的磁共振血管造影。
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