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Multi-Object Segmentation using Coupled Shape Space Models

机译:使用耦合形状空间模型的多对象分割

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Due to noise and artifacts often encountered in medical images, segmenting objects in these is one of the most challenging tasks in medical image analysis. Model-based approaches like statistical shape models (SSMs) incorporate prior knowledge that supports object detection in case of in-complete evidence from image data. In this paper, we present a method to increase information of the object's shape in problematic image areas by incorporating mutual shape information from other entities in the image. This is done by using a common shape space of multiple objects as additional restriction. Two different approaches to implement mutual shape information are presented. Evaluation was performed on nine cardiac images by simultaneous segmentation of the epi- and endocardium of the left heart ventricle using the proposed methods. The results show that the segmentation quality is improved with both methods. For the better one, the average surface distance error is approx. 40% lower.
机译:由于医学图像中经常会遇到噪声和伪影,因此在医学图像分析中对这些对象进行分割是最具挑战性的任务之一。统计模型(SSM)等基于模型的方法结合了先验知识,可在图像数据证据不完整的情况下支持对象检测。在本文中,我们提出了一种通过合并来自图像中其他实体的相互形状信息来增加问题图像区域中对象形状信息的方法。这是通过将多个对象的公共形状空间用作附加限制来完成的。提出了两种实现相互形状信息的不同方法。使用提出的方法,通过同时分割左心室的上皮和心内膜,对九个心脏图像进行了评估。结果表明,两种方法均能提高分割质量。更好的是,平均表面距离误差约为。低40%。

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