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Near Convex Region Adjacency Graph and Approximate Neighborhood String Matching for Symbol Spotting in Graphical Documents

机译:近凸区域邻接图和近似邻域字符串匹配,用于图形文档中的符号识别

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This paper deals with a sub graph matching problem in Region Adjacency Graph (RAG) applied to symbol spotting in graphical documents. RAG is a very important, efficient and natural way of representing graphical information with a graph but this is limited to cases where the information is well defined with perfectly delineated regions. What if the information we are interested in is not confined within well defined regions? This paper addresses this particular problem and solves it by defining near convex grouping of oriented line segments which results in near convex regions. Pure convexity imposes hard constraints and can not handle all the cases efficiently. Hence to solve this problem we have defined a new type of convexity of regions, which allows convex regions to have concavity to some extend. We call this kind of regions Near Convex Regions (NCRs). These NCRs are then used to create the Near Convex Region Adjacency Graph (NCRAG) and with this representation we have formulated the problem of symbol spotting in graphical documents as a sub graph matching problem. For sub graph matching we have used the Approximate Edit Distance Algorithm (AEDA) on the neighborhood string, which starts working after finding a key node in the input or target graph and iteratively identifies similar nodes of the query graph in the neighborhood of the key node. The experiments are performed on artificial, real and distorted datasets.
机译:本文讨论了将区域邻接图(RAG)中的子图匹配问题应用于图形文档中的符号点识别。 RAG是用图形表示图形信息的一种非常重要,高效且自然的方式,但是它仅限于使用轮廓清晰的区域很好地定义了信息的情况。如果我们感兴趣的信息不局限于定义明确的区域,该怎么办?本文解决了这个特定问题,并通过定义定向线段的近凸分组来解决该问题,该分组导致了近凸区域。单纯的凸度施加了严格的约束,不能有效地处理所有情况。因此,为了解决这个问题,我们定义了一种新型的区域凸度,该类型的凸度允许凸度区域具有一定程度的凹度。我们将这种区域称为“近凸区域(NCR)”。然后将这些NCR用于创建“近凸区域邻接图”(NCRAG),并以此表示形式将图形文档中的符号斑点问题表示为子图匹配问题。对于子图匹配,我们在邻域字符串上使用了近似编辑距离算法(AEDA),该算法在找到输入或目标图中的关键节点后开始工作,并迭代地标识关键节点附近的查询图的相似节点。实验是在人工,真实和失真的数据集上进行的。

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