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Texture-Adaptive Active Contour Models

机译:纹理自适应活动轮廓模型

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摘要

Unsupervised segmentation is a key challenge for automated quantification of medical images. Although a balloon model is able to detect arbitrarily shaped objects in images, it requires careful adjustment of parameters prior to segmentation. Based on global texture analyses, our method allows to set these parameters automatically for heterogeneous images such as MRI, ultrasound, or microscopy. Cooccurrence matrices are extracted from prototype images and used as feature vectors to train a synergetic classifier. These matrices are computed likewise for all other images. To control segmentation, similarity measures for these features are applied to weight the linear combination of the prototype parameters. The method was tested on 81 synthetic images and applied to a set of 1616 heterogeneous radiographs. Setting the parameters of active contour models by the proposed method improves the acceptance rate of unsupervised segmentation from 31% up to 71%。
机译:无监督的细分是医学图像自动量化的关键挑战。尽管气囊模型能够在图像中检测任意形状的物体,但它需要在分割之前仔细调整参数。基于全局纹理分析,我们的方法允许自动为异质图像自动设置这些参数,例如MRI,超声波或显微镜。 Cooccurrence矩阵从原型图像中提取并用作特征向量以培训协同分类器。这些矩阵同样地计算所有其他图像。为了控制分割,应用这些特征的相似度量来重写原型参数的线性组合。该方法在81个合成图像上测试并应用于一组1616个异质射线照片。通过所提出的方法设定有源轮廓模型的参数可提高无监督分段的接受率,从31%高达71%。

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