Projection onto the Manifold of Elongated Structures for Accurate Extraction

A. Sironi, V. Lepetit, P. Fua
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引用次数: 36

Abstract

Detection of elongated structures in 2D images and 3D image stacks is a critical prerequisite in many applications and Machine Learning-based approaches have recently been shown to deliver superior performance. However, these methods essentially classify individual locations and do not explicitly model the strong relationship that exists between neighboring ones. As a result, isolated erroneous responses, discontinuities, and topological errors are present in the resulting score maps. We solve this problem by projecting patches of the score map to their nearest neighbors in a set of ground truth training patches. Our algorithm induces global spatial consistency on the classifier score map and returns results that are provably geometrically consistent. We apply our algorithm to challenging datasets in four different domains and show that it compares favorably to state-of-the-art methods.
投影到流形上的细长结构精确提取
在许多应用中,检测2D图像和3D图像堆栈中的细长结构是一个关键的先决条件,基于机器学习的方法最近被证明具有卓越的性能。然而,这些方法基本上是对单个位置进行分类,并没有明确地对相邻位置之间存在的强烈关系进行建模。因此,孤立的错误响应、不连续性和拓扑错误出现在结果的分数图中。我们通过在一组地面真值训练补丁中,将分数地图的补丁投影到它们最近的邻居来解决这个问题。我们的算法在分类器得分图上诱导全局空间一致性,并返回可证明的几何一致性结果。我们将我们的算法应用于四个不同领域的挑战性数据集,并表明它优于最先进的方法。
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