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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Convergent matching for model-based computer vision
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Convergent matching for model-based computer vision

机译:收敛匹配基于模型的计算机视觉

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摘要

We consider matching in model-based computer vision as a converging discrete iteration and give a basis for examining the convergence as the movement of the working point in a lattice. Because the matching is non-deterministic A e discuss convergence in terms of completing sub-problems within a time slot. This form of low-level scheduling avoids effectively unlimited trials of sub-graphs, a phenomenon that we call the NP-trap. We define high-level scheduling as the need to test each reference class at least once and thereafter focus attention on the most promising candidates. Examples show the bounding of matching time with a time slot and focusing of attention guided by a figure of merit. (C) 2002 Published by Elsevier Science Ltd on behalf of Pattern Recognition Society. [References: 13]
机译:我们将基于模型的计算机视觉中的匹配视为收敛的离散迭代,并为检查收敛作为晶格中工作点的运动提供了基础。因为匹配是不确定的,所以在时隙内完成子问题方面讨论了收敛。这种形式的低级调度可以有效避免子图的无限尝试,这种现象我们称为NP陷阱。我们将高级计划定义为需要至少测试一次每个参考类别,然后将注意力集中在最有前途的候选人上。示例显示了匹配时间与时间段的边界,以及由品质因数引导的注意力集中。 (C)2002由Elsevier Science Ltd代表模式识别协会出版。 [参考:13]

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