基于图密度的皱纸脊网自动检测

Marvin Huang, Chiou-Ting Hsu, Kazuyuki Tanaka
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引用次数: 1

摘要

皱巴巴的纸张往往呈现出特定而复杂的结构,物理学家通常将其描述为脊网。现有文献表明,由于皱褶纸结构复杂,很难实现皱褶纸脊网的自动检测。在本文中,我们试图根据我们提出的密度标准开发一个自动检测过程。我们将脊网络建模为加权图,其中节点表示脊的交叉点,边缘是在皱巴巴的纸上检测到的拉直的脊。我们首先通过检测节点,然后利用脊响应确定边缘权重来构建加权图。接下来,我们制定了一个图密度准则来评估检测到的脊网。最后,我们提出了一种边连接方法,通过最大化所提出的密度准则来构造图。实验结果表明,在密度准则下,我们提出的节点检测与边缘线连接方法可以有效地实现脊网检测的自动化。
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Automatic ridge network detection in crumpled paper based on graph density
Crumpled sheets of paper tend to exhibit specific and complex structure, which is usually described as ridge network by physicists. Existing literature has showed that it is difficult to automate ridge network detection in crumpled paper because of its complex structure. In this paper, we attempt to develop an automatic detection process in terms of our proposed density criterion. We model the ridge network as a weighted graph, where the nodes indicate the intersections of ridges and the edges are the straightened ridges detected in crumpled paper. We construct the weighted graph by first detecting the nodes and then determining the edge weight using the ridge responses. Next, we formulate a graph density criterion to evaluate the detected ridge network. Finally, we propose an edge linking method to construct the graph by maximizing the proposed density criterion. Our experimental results show that, with the density criterion, our proposed node detection together with the edge line linking method could effectively automate the ridge network detection.
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