Shape-Based Analysis on Component-Graphs for Multivalued Image Processing

Éloïse Grossiord, B. Naegel, Hugues Talbot, Nicolas Passat, Laurent Najman
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引用次数: 10

Abstract

Abstract Connected operators based on hierarchical image models have been increasingly considered for the design of efficient image segmentation and filtering tools in various application fields. Among hierarchical image models, component-trees represent the structure of grey-level images by considering their nested binary level-sets obtained from successive thresholds. Recently, a new notion of component-graph was introduced to extend the component-tree to any grey-level or multivalued images. The notion of shaping was also introduced as a way to improve the anti-extensive filtering by considering a two-layer component-tree for grey-level image processing. In this article, we study how component-graphs (that extend the component-tree from a spectral point of view) and shapings (that extend the component-tree from a conceptual point of view) can be associated for the effective processing of multivalued images. We provide structural and algorithmic developments. Although the contributions of this article are theoretical and methodological, we also provide two illustration examples that qualitatively emphasize the potential use and usefulness of the proposed paradigms for image analysis purposes.
多值图像处理中基于形状的成分图分析
基于层次图像模型的连通算子被越来越多地用于设计高效的图像分割和滤波工具。在分层图像模型中,组件树通过考虑从连续阈值获得的灰度图像嵌套的二值水平集来表示灰度图像的结构。近年来,为了将组件树扩展到任意灰度级或多值图像,引入了组件图的概念。本文还引入了整形的概念,通过考虑灰度图像处理的两层分量树来改进抗扩展滤波。在本文中,我们研究了如何将组件图(从光谱的角度扩展组件树)和形状(从概念的角度扩展组件树)相关联,以有效地处理多值图像。我们提供结构和算法开发。尽管本文的贡献是理论和方法上的,但我们也提供了两个实例来定性地强调所提出的范式在图像分析目的中的潜在用途和有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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