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首页> 外文期刊>Neurocomputing >Tree-based Ensemble Classifier Learning for Automatic Brain Glioma Segmentation
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Tree-based Ensemble Classifier Learning for Automatic Brain Glioma Segmentation

机译:基于树的集成分类器学习,用于脑胶质瘤自动分割

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We introduce a dynamic multiscale tree (DMT) architecture that learns how to leverage the strengths of different state-of-the-art classifiers for supervised multi-label image segmentation. Unlike previous works that simply aggregate or cascade classifiers for addressing image segmentation and labeling tasks, we propose to embed strong classifiers into a tree structure that allows bi-directional flow of information between its classifier nodes to gradually improve their performances. Our DMT is a generic classification model that inherently embeds different cascades of classifiers while enhancing learning transfer between them to boost up their classification accuracies. Specifically, each node in our DMT can nest a Structured Random Forest (SRF) classifier or a Bayesian Network (BN) classifier. The proposed SRF-BN DMT architecture has several appealing properties. First, while SRF operates at a patch-level (regular image region), BN operates at the super-pixel level (irregular image region), thereby enabling the DMT to integrate multi-level image knowledge in the learning process. Second, although BN is powerful in modeling dependencies between image elements (superpixels, edges) and their features, the learning of its structure and parameters is challenging. On the other hand, SRF may fail to accurately detect very irregular object boundaries. The proposed DMT robustly overcomes these limitations for both classifiers through the ascending and descending flow of contextual information between each parent node and its children nodes. Third, we train DMT using different scales for input patches and superpixels. Basically, as we go deeper along the tree edges nearing its leaf nodes, we progressively decrease the patch and superpixel sizes, producing segmentation maps that capture a coarse-to-fine image details. Last, DMT demonstrates its outperformance in comparison to several state-of-the-art segmentation methods for multi-labeling of brain images with gliomas. (C) 2018 Elsevier B.V. All rights reserved.
机译:我们介绍了一种动态多尺度树(DMT)架构,该架构可学习如何利用不同的最新分类器的优势进行监督的多标签图像分割。与以前的工作简单地聚合或级联分类器以解决图像分割和标记任务的工作不同,我们建议将强大的分类器嵌入树状结构中,以允许其分类器节点之间的双向信息流逐步改善其性能。我们的DMT是一种通用分类模型,它固有地嵌入了不同的分类器级联,同时增强了它们之间的学习转移,从而提高了其分类精度。具体来说,我们DMT中的每个节点都可以嵌套结构随机森林(SRF)分类器或贝叶斯网络(BN)分类器。提出的SRF-BN DMT体系结构具有几个吸引人的特性。首先,虽然SRF在补丁级别(常规图像区域)运行,而BN在超像素级别(常规图像区域)运行,从而使DMT能够在学习过程中集成多级图像知识。其次,尽管BN在建模图像元素(超像素,边缘)及其特征之间的依存关系方面功能强大,但对其结构和参数的学习却充满了挑战。另一方面,SRF可能无法准确检测非常不规则的对象边界。提议的DMT通过每个父节点及其子节点之间上下文信息的升序和降序,稳健地克服了两个分类器的这些限制。第三,我们针对输入色块和超像素使用不同的比例来训练DMT。基本上,当我们沿着靠近其叶节点的树边缘深入时,我们会逐渐减小斑块和超像素的大小,从而生成可捕获从粗糙到精细的图像细节的分割图。最后,与多种用于神经胶质瘤的脑图像多标记的最新分割方法相比,DMT证明了其出色的表现。 (C)2018 Elsevier B.V.保留所有权利。

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