Distance guided selection of the best base classifier in an ensemble with application to cervigram image segmentation

Wei Wang, Xiaolei Huang
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引用次数: 4

Abstract

We empirically evaluate a distance-guided learning method embedded in a multiple classifier system (MCS) for tissue segmentation in optical images of the uterine cervix. Instead of combining multiple base classifiers as in traditional ensemble methods, we propose a Bhattacharyya distance based metric for measuring the similarity in decision boundary shapes between a pair of statistical classifiers. By generating an ensemble of base classifiers trained independently on separate training images, we can use the distance metric to select those classifiers in the ensemble whose decision boundaries are similar to that of an unknown test image. In an extreme case, we select the base classifier with the most similar decision boundary to accomplish classification and segmentation on the test image. Our approach is novel in the way that the nearest neighbor is picked and effectively solves classification problems in which base classifiers with good overall performance are not easy to construct due to a large variation in the training examples. In our experiments, we applied our method and several popular ensemble methods to segmenting acetowhite regions in cervical images. The overall classification accuracy of the proposed method is significantly better than that of a single classifier learned using the entire training set, and is also superior to other ensemble methods including majority voting, STAPLE, Boosting and Bagging.
距离引导下集合中最佳基分类器的选择及其在图像分割中的应用
我们经验评估了一种嵌入在多分类器系统(MCS)中的远程引导学习方法,用于子宫宫颈光学图像的组织分割。我们提出了一种基于Bhattacharyya距离的度量来度量一对统计分类器之间决策边界形状的相似性,而不是像传统的集成方法那样将多个基分类器组合在一起。通过生成在单独的训练图像上独立训练的基本分类器的集合,我们可以使用距离度量来选择集合中决策边界与未知测试图像相似的分类器。在极端情况下,我们选择决策边界最相似的基分类器对测试图像进行分类和分割。我们的方法在选择最近邻的方式上是新颖的,并且有效地解决了由于训练样例变化很大而不易构建具有良好总体性能的基分类器的分类问题。在我们的实验中,我们将我们的方法和几种流行的集成方法应用于子宫颈图像的乙酰白区域分割。该方法的总体分类精度明显优于使用整个训练集学习单个分类器的分类精度,也优于多数投票、STAPLE、Boosting和Bagging等集成方法。
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