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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Optimal encoding of graph homomorphism energy using fuzzy information aggregation operators
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Optimal encoding of graph homomorphism energy using fuzzy information aggregation operators

机译:使用模糊信息聚合算子对图同态能量进行最优编码

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The attributed relational graph matching (ARG) strategy is a well-known approach to object/pattern recognition. In the past for the parallel solution of ARG matching problem, an overall objective function was constructed using linearly weighted information aggregation function and one set of parameter values was chosen for all models by trial-and-error for the parameters in the function. In this paper, the compatibility between every pair of model and scene attributes is interpreted as a fuzzy value and subsequently the nonlinear fuzzy information aggregation operators are used to fuse the information captured in the chosen attributes. To learn the parameters in the fuzzy information aggregation operators, the "learning from samples" strategy is used. The learning of weight parameters is formulated as an optimisation problem and solved using the gradient projection algorithm based learning procedure. The learning procedure implicitly evaluates ambiguity, robustness and discriminatory power of the relational attributes chosen for graph matching and assigns weights appropriately to the chosen attributes. The learning procedure also enables us to compute a distinct set of optimal parameters for every model to reflect the characteristics of the model so that the homomorphic ARG matching problem can be optimally encoded in the energy function for the model. Experimental results are presented to illustrate effectiveness and necessity of the parameter estimation and learning procedures. (C) 1998 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 38]
机译:属性关系图匹配(ARG)策略是一种众所周知的对象/模式识别方法。过去,对于ARG匹配问题的并行解决方案,使用线性加权信息聚合函数构造总体目标函数,并通过反复试验为函数中的参数选择所有模型的一组参数值。在本文中,每对模型和场景属性之间的兼容性被解释为一个模糊值,随后非线性非线性信息聚合算子被用来融合在所选属性中捕获的信息。为了学习模糊信息聚合算子中的参数,使用了“从样本中学习”策略。权重参数的学习被公式化为一个优化问题,并使用基于梯度投影算法的学习过程来解决。学习过程隐式评估为图匹配选择的关系属性的歧义性,鲁棒性和区分能力,并为选择的属性适当分配权重。学习过程还使我们能够为每个模型计算一组独特的最优参数,以反映模型的特征,从而可以将同态ARG匹配问题最优地编码在模型的能量函数中。实验结果表明了参数估计和学习过程的有效性和必要性。 (C)1998模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:38]

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