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Structure preserving binary image morphing using Delaunay triangulation

机译:使用Delaunay三角剖分的结构保留二进制图像变形

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Mathematical morphology has been of a great significance to several scientific fields. Dilation, as one of the fundamental operations, has been very much reliant on the common methods based on the set theory and on using specific shaped structuring elements to morph binary blobs. We hypothesised that by performing morphological dilation while exploiting geometry relationship between dot patterns, one can gain some advantages. The Delaunay triangulation was our choice to examine the feasibility of such hypothesis due to its favourable geometric properties. We compared our proposed algorithm to existing methods and it becomes apparent that Delaunay based dilation has the potential to emerge as a powerful tool in preserving objects structure and elucidating the influence of noise. Additionally, defining a structuring element is no longer needed in the proposed method and the dilation is adaptive to the topology of the dot patterns. We assessed the property of object structure preservation by using common measurement metrics. We also demonstrated such property through handwritten digit classification using HOG descriptors extracted from dilated images of different approaches and trained using Support Vector Machines. The confusion matrix shows that our algorithm has the best accuracy estimate in 80% of the cases. In both experiments, our approach shows a consistent improved performance over other methods which advocates for the suitability of the proposed method. (C) 2016 Elsevier B.V. All rights reserved.
机译:数学形态学对几个科学领域都具有重要意义。作为基本操作之一,扩张非常依赖于基于集合论和使用特定形状的结构化元素来变形二进制斑点的通用方法。我们假设,通过在利用点阵图形之间的几何关系的同时进行形态学扩张,可以获得一些优势。由于其良好的几何特性,我们选择Delaunay三角剖分法来检验这种假设的可行性。我们将我们提出的算法与现有方法进行了比较,很明显,基于Delaunay的膨胀有可能成为保留对象结构和阐明噪声影响的有力工具。另外,在所提出的方法中不再需要定义结构元素,并且扩张适应于点图案的拓扑。我们通过使用常见的度量标准来评估对象结构保存的属性。我们还通过使用HOG描述符通过手写数字分类演示了这种属性,该HOG描述符从不同方法的膨胀图像中提取并使用支持向量机进行了训练。混淆矩阵表明,我们的算法在80%的情况下具有最佳的准确性估计。在两个实验中,我们的方法均显示出比其他方法始终如一的改进性能,而其他方法则提倡所提出方法的适用性。 (C)2016 Elsevier B.V.保留所有权利。

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