首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Atomic potential matching: An evolutionary target recognition approach based on edge features
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Atomic potential matching: An evolutionary target recognition approach based on edge features

机译:原子势匹配:基于边缘特征的进化目标识别方法

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摘要

Target matching via edge features has been a hot research topic. Potential-based shape matching, as a relatively new branch, is inspired by the interactions among particles in physics. In more detail, pixels along the target contour and along the text image contours are regarded as two groups of atoms. With appropriate geometric transformations, both atom groups can lead to the strongest attraction, which implies the optimal match. The search process for satisfactory geometric transformations can be considered as a numerical optimization problem, which is handled by stochastic fractal search (SFS) algorithm. Comparative simulations are conducted to investigate the performances of various similarity criteria and the performance of SFS algorithm. In addition, capability to recognize more than one correct target in the test image is emphasized. Theoretical analyses preliminarily indicate that our atomic potential matching model is relevant to an existing technique named lateral inhibition in image enhancement. The goal of this study is to complete the groundwork for further research into highly efficient matching performance. (C) 2015 Elsevier GmbH. All rights reserved.
机译:通过边缘特征进行目标匹配一直是研究的热点。基于势的形状匹配作为一个相对较新的分支,受到物理学中粒子之间相互作用的启发。更详细地,沿着目标轮廓和沿着文本图像轮廓的像素被视为两组原子。通过适当的几何变换,两个原子组都可以导致最强的吸引力,这意味着最佳匹配。令人满意的几何变换的搜索过程可以看作是一个数值优化问题,可以通过随机分形搜索(SFS)算法来处理。进行了比较仿真,以研究各种相似性标准的性能以及SFS算法的性能。另外,强调了识别测试图像中的多个正确目标的能力。理论分析初步表明,我们的原子电势匹配模型与一种名为横向抑制的现有技术有关。这项研究的目的是为进一步研究高效匹配性能奠定基础。 (C)2015 Elsevier GmbH。版权所有。

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