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Using Simple Genetic Algorithm for a Hand Contour Classification: An Experimental Study

机译:使用简单的遗传算法进行手续轮廓分类:实验研究

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The area of biometric systems has passed through considerable advancement in the past two decades. Supporting of security provision plays a key role in many branches. There are large amount of the biometrical markers which can be utilized in the person identification process. One of the possible ways is a method which uses a hand shape contour classification. The presented paper solves the problem of hand contours classification with use of a Simple Genetic Algorithm (SGA). The foundations of the SGA were established in 1950's, but an improvement process of the SGA continues. The hand contour for the classification purposes is obtained from a color image from a biometric scanner. The biometric scanner has fixed pegs to hold the hand, or the hand can be freely placed on the scanning area. A core of the proposed estimator is an Iterative Closes Point algorithm which enables matching of the two point-clouds and expressing their dissimilarity regarding the elected metrics. In the experimental section, a large number of experiments were performed with a different setting of the SGA working parameters. Beside the capability to correctly align/match the hand contours, selected standard benchmark tests were performed with a corresponding number of dimensions. The presented estimator solves the thee-dimensional optimization task. Based on experimental results, it was proven that in the case of identical contours the proposed method, which utilizes the SGA optimizer, provides very accurate results.
机译:生物识别系统领域已经通过了过去二十年的相当大的进步。安全性提供的支持在许多分支中扮演着关键作用。存在大量的生物标记,可用于人识别过程中。其中一种可能的方式是一种使用手形轮廓分类的方法。本文解决了使用简单的遗传算法(SGA)的手轮廓分类问题。 SGA的基础成立于1950年,但SGA的改善过程仍在继续。用于分类目的的手轮廓从生物识别扫描仪的彩色图像获得。生物识别扫描仪具有固定钉以保持手,或者手可以自由放在扫描区域上。 A core of the proposed estimator is an Iterative Closes Point algorithm which enables matching of the two point-clouds and expressing their dissimilarity regarding the elected metrics.在实验部分中,用SGA工作参数的不同设置进行大量实验。除了正确对齐/匹配手轮廓的能力之外,选择的标准基准测试进行了相应数量的维度。呈现的估计器解决了THE维优化任务。基于实验结果,证明在相同轮廓的情况下,利用SGA优化器的提出方法提供了非常准确的结果。

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