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Full-Search-Equivalent Pattern Matching with Incremental Dissimilarity Approximations

机译:增量相似度近似的完全搜索等效模式匹配

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摘要

This paper proposes a novel method for fast pattern matching based on dissimilarity functions derived from the Lp norm, such as the Sum of Squared Differences (SSD) and the Sum of Absolute Differences (SAD). The proposed method is full-search equivalent, i.e. it yields the same results as the Full Search (FS) algorithm. In order to pursue computational savings the method deploys a succession of increasingly tighter lower bounds of the adopted Lp norm-based dissimilarity function. Such bounding functions allow for establishing a hierarchy of pruning conditions aimed at skipping rapidly those candidates that cannot satisfy the matching criterion. The paper includes an experimental comparison between the proposed method and other full-search equivalent approaches known in literature, which proves the remarkable computational efficiency of our proposal.
机译:本文提出了一种新的快速模式匹配方法,该方法基于从Lp范数得出的不相似函数(例如平方差和(SSD)和绝对差和(SAD))进行快速匹配。提出的方法与完全搜索等效,即产生的结果与完全搜索(FS)算法相同。为了追求计算上的节省,该方法对采用的基于Lp范数的差异函数采用一系列越来越严格的下界。这样的边界功能允许建立修剪条件的层次结构,以快速跳过那些不能满足匹配标准的候选对象。本文包括了所提出的方法与文献中已知的其他全搜索等效方法之间的实验比较,证明了我们的提议具有非凡的计算效率。

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