首页> 外文会议>European Conference on Computer Vision(ECCV 2006) pt.3; 20060507-13; Graz(AT) >A Learning Based Approach for 3D Segmentation and Colon Detagging
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A Learning Based Approach for 3D Segmentation and Colon Detagging

机译:基于学习的3D分割和结肠标记方法

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Foreground and background segmentation is a typical problem in computer vision and medical imaging. In this paper, we propose a new learning based approach for 3D segmentation, and we show its application on colon detagging. In many problems in vision, both the foreground and the background observe large intra-class variation and inter-class similarity. This makes the task of modeling and segregation of the foreground and the background very hard. The framework presented in this paper has the following key components: (1) We adopt probabilistic boosting tree for learning discriminative models for the appearance of complex foreground and background. The discriminative model ratio is proved to be a pseudo-likelihood ratio modeling the appearances. (2) Integral volume and a set of 3D Haar filters are used to achieve efficient computation. (3) We devise a 3D topology representation, grid-line, to perform fast boundary evolution. The proposed algorithm has been tested on over 100 volumes of size 500 x 512 x 512 at the speed of 2 ~ 3 minutes per volume. The results obtained are encouraging.
机译:前景和背景分割是计算机视觉和医学成像中的典型问题。在本文中,我们提出了一种基于学习的3D分割新方法,并展示了其在结肠标记中的应用。在视觉的许多问题中,前景和背景都观察到较大的类内差异和类间相似性。这使得对前景和背景进行建模和隔离非常困难。本文提出的框架具有以下关键组成部分:(1)我们采用概率提升树来学习判别模型,以识别复杂的前景和背景。判别模型比率被证明是模拟外观的伪似然比率。 (2)使用积分体积和一组3D Haar滤波器来实现有效的计算。 (3)我们设计了3D拓扑表示网格线来执行快速边界演化。该算法已经在100个大小为500 x 512 x 512的体积上以2〜3分钟的速度进行了测试。获得的结果令人鼓舞。

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