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Deterministic search for relational graph matching

机译:关系图匹配的确定性搜索

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This paper describes a comparative study of various deterministic discrete search-strategies for graph-matching. The framework for our study is provided by the Bayesian consistency measure recently reported by Wilson and Hancock (IEEE PAMI 19 (1997) 634-648; Pattern Recognition 17 (1996) 263-276) and Wilson et al. (Comput. Vision Image Understanding 72 (1998) 20-38') We investigate two classes of update process. The first of these aims to exploit discrete gradient ascent methods. We investigate the effect of searching in the direction of both the local and global gradient maximum. An experimental study demonstrates that although more computationally intensive, the global gradient method offers significant performance advantages in terms of accuracy of match. Our second search strategy is based on tabu search. In order to develop this method we introduce memory into the search procedure by defining context-dependant search paths. We illustrate that although it is more efficient than the global gradient method, tabu search delivers almost comparable performance.
机译:本文介绍了针对图匹配的各种确定性离散搜索策略的比较研究。由Wilson和Hancock(IEEE PAMI 19(1997)634-648; Pattern Recognition 17(1996)263-276)和Wilson等人最近报道的贝叶斯一致性测度提供了我们的研究框架。 (计算机视觉图像理解72(1998)20-38')我们研究了两类更新过程。这些目标中的第一个目标是利用离散梯度上升方法。我们研究了在局部和全局梯度最大值方向上搜索的效果。实验研究表明,尽管计算量更大,但全局梯度方法在匹配精度方面提供了显着的性能优势。我们的第二种搜索策略是基于禁忌搜索。为了开发此方法,我们通过定义上下文相关的搜索路径将内存引入搜索过程。我们说明,尽管禁忌搜索比全局梯度方法更有效,但其性能几乎可比。

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