Probabilistic Appearance Models for Segmentation and Classification

J. Krüger, J. Ehrhardt, H. Handels
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引用次数: 6

Abstract

Statistical shape and appearance models are often based on the accurate identification of one-to-one correspondences in a training data set. At the same time, the determination of these corresponding landmarks is the most challenging part of such methods. Hufnagel etal developed an alternative method using correspondence probabilities for a statistical shape model. We propose the use of probabilistic correspondences for statistical appearance models by incorporating appearance information into the framework. A point-based representation is employed representing the image by a set of vectors assembling position and appearances. Using probabilistic correspondences between these multi-dimensional feature vectors eliminates the need for extensive preprocessing to find corresponding landmarks and reduces the dependence of the generated model on the landmark positions. Then, a maximum a-posteriori approach is used to derive a single global optimization criterion with respect to model parameters and observation dependent parameters, that directly affects shape and appearance information of the considered structures. Model generation and fitting can be expressed by optimizing the same criterion. The developed framework describes the modeling process in a concise and flexible mathematical way and allows for additional constraints as topological regularity in the modeling process. Furthermore, it eliminates the demand for costly correspondence determination. We apply the model for segmentation and landmark identification in hand X-ray images, where segmentation information is modeled as further features in the vectorial image representation. The results demonstrate the feasibility of the model to reconstruct contours and landmarks for unseen test images. Furthermore, we apply the model for tissue classification, where a model is generated for healthy brain tissue using 2D MRI slices. Applying the model to images of stroke patients the probabilistic correspondences are used to classify between healthy and pathological structures. The results demonstrate the ability of the probabilistic model to recognize healthy and pathological tissue automatically.
用于分割和分类的概率外观模型
统计形状和外观模型通常基于对训练数据集中一对一对应关系的准确识别。同时,这些相应地标的确定是这些方法中最具挑战性的部分。Hufnagel等人开发了一种使用统计形状模型对应概率的替代方法。我们建议通过将外观信息纳入框架,使用概率对应的统计外观模型。采用基于点的表示,用一组集合了位置和外观的向量来表示图像。利用这些多维特征向量之间的概率对应关系,无需进行大量的预处理来寻找相应的地标,并减少了生成的模型对地标位置的依赖。然后,使用最大后验方法推导出一个关于模型参数和观测相关参数的单一全局优化准则,该准则直接影响所考虑结构的形状和外观信息。模型生成和拟合可以用优化同一准则来表示。开发的框架以简洁灵活的数学方式描述建模过程,并允许在建模过程中作为拓扑规则的附加约束。此外,它消除了对昂贵的通信确定的需求。我们将该模型应用于手部x射线图像的分割和地标识别,其中分割信息被建模为矢量图像表示中的进一步特征。实验结果表明,该模型对未见过的测试图像进行轮廓和地标重建是可行的。此外,我们将该模型应用于组织分类,其中使用二维MRI切片为健康脑组织生成模型。将该模型应用于脑卒中患者图像,利用概率对应关系对健康和病理结构进行分类。结果表明,该概率模型具有自动识别健康组织和病理组织的能力。
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