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Cluster Based Vector Attribute Filtering

机译:基于聚类的矢量属性过滤

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Morphological attribute filters operate on images based on properties or attributes of connected components. Until recently, attribute filtering was based on a single global threshold on a scalar property to remove or retain objects. A single threshold struggles in case no single property or attribute value has a suitable, usually multi-modal, distribution. Vector-attribute filtering allows better description of characteristic features for 2D images. In this paper, we apply vector-attribute filtering to 3D and incorporate unsupervised pattern recognition, where connected components are classified based on the similarity of feature vectors. Using a single attribute allows multi-thresholding for attribute filters where more than two classes of structures of interest can be selected. In vector-attribute filters automatic clustering avoids the need for either setting very many attribute thresholds, or finding suitable class prototypes in 3D and setting a dissimilarity threshold. Explorative visualization reduces to visualizing and selecting relevant clusters. We show that the performance of these new filters is better than those of regular attribute filters in enhancement of objects in medical images.
机译:形态属性过滤器基于连接的组件的属性或属性对图像进行操作。直到最近,属性过滤还基于标量属性上的单个全局阈值来删除或保留对象。万一没有单个属性或属性值具有合适的(通常是多模式的)分布,则单个阈值会很困难。向量属性过滤可以更好地描述2D图像的特征。在本文中,我们将向量属性过滤应用于3D并结合了无监督模式识别,其中基于特征向量的相似性对连接的组件进行了分类。使用单个属性可以对属性过滤器进行多阈值处理,其中可以选择两类以上的感兴趣结构。在向量属性过滤器中,自动聚类避免了需要设置很多属性阈值或在3D中找到合适的类原型并设置相异性阈值的需要。探索性可视化简化为可视化和选择相关集群。我们证明,在增强医学图像中的对象方面,这些新滤镜的性能优于常规属性滤镜。

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