Supervised segmentation by iterated contextual pixel classification

M. Loog, B. Ginneken
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引用次数: 33

Abstract

We propose a general iterative contextual pixel classifier for supervised image segmentation. The iterative procedure is statistically well-founded and can be considered a variation on the iterated conditional modes (ICM) of Besag (1983). Having an initial segmentation, the algorithm iteratively updates it by reclassifying every pixel, based on the original features and, additionally, contextual information. This contextual information consists of the class labels of pixels in the neighborhood of the pixel to be reclassified. Three essential differences with the original ICM are: (1) our update step is merely based on a classification result, hence a voiding the explicit calculation of conditional probabilities; (2) the clique formalism of the Markov random field framework is not required; (3) no assumption is made w.r.t. the conditional independence of the observed pixel values given the segmented image. The important consequence of properties 1 and 2 is that one can easily incorporate rate common pattern recognition tools in our segmentation algorithm. Examples are different classifiers-e.g. Fisher linear discriminant, nearest-neighbor classifier, or support vector machines-and dimension reduction techniques like LDA, or PCA. We experimentally compare a specific instance of our general method to pixel classification, using simulated data and chest radiographs, and show that the former outperforms the latter.
基于迭代上下文像素分类的监督分割
我们提出了一种用于监督图像分割的通用迭代上下文像素分类器。迭代过程在统计上是有充分根据的,可以被认为是Besag(1983)的迭代条件模态(ICM)的一种变体。该算法具有初始分割,通过基于原始特征和上下文信息对每个像素进行重新分类来迭代更新它。该上下文信息由待重分类像素附近像素的类标签组成。与原始ICM的三个本质区别是:(1)我们的更新步骤仅仅基于分类结果,因此取消了条件概率的显式计算;(2)不需要马尔可夫随机场框架的团形式;(3)没有假设在给定分割图像的情况下,观察到的像素值的条件独立性。属性1和2的重要结果是,我们可以很容易地将常见的模式识别工具合并到分割算法中。例子是不同的分类器。Fisher线性判别、最近邻分类器或支持向量机,以及LDA或PCA等降维技术。我们通过实验比较了我们的一般方法与像素分类的具体实例,使用模拟数据和胸片,并表明前者优于后者。
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