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首页> 外文期刊>Indian Journal of Science and Technology >Multilayer Perceptron Neural Network in Classifying Gender using Fingerprint Global Level Features
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Multilayer Perceptron Neural Network in Classifying Gender using Fingerprint Global Level Features

机译:多层感知器神经网络在指纹全局水平特征分类中的应用

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摘要

Background/Objective: A new algorithms of gender classification from fingerprint is proposed based on Acree 25mm2 square area. The classification is achieved by extracting the global features from fingerprint images which is Ridge Density, Ridge Thickness to Valley Thickness Ratio (RTVTR) and White Lines Count. The objective of this study to test the effectiveness of the this new algorithm by looking the classification rate. Multilayer Perceptron Neural Network (MLPNN) used as a classifier. Methods: This new algorithm is tested with a database of 3000 fingerprint in which 1430 were male fingerprint and 1570 were female fingerprints. Classification part is tested with different test option. Findings: This study found that women tends to have higher Ridge Density, higher white lines count and higher ridge thickness to valley thickness ratio compared to male same as the previous study. Therefore, we can conclude that this new algorithm is very efficient and effective in classifying gender. Conclusion: The overall classification rate is 97.25% has been achieved
机译:背景/目的:提出一种基于Acree 25mm2平方面积的指纹性别分类新算法。通过从指纹图像中提取全局特征(岭密度,岭厚度与谷厚度比(RTVTR)和白线计数)来实现分类。本研究的目的是通过查看分类率来测试这种新算法的有效性。多层感知器神经网络(MLPNN)用作分类器。方法:用3000个指纹数据库测试了该新算法,其中1430个是男性指纹,1570个是女性指纹。分类部分使用不同的测试选项进行测试。研究结果:与男性相比,女性比男性更倾向于具有较高的脊密度,较高的白线数和较高的脊厚与谷厚之比。因此,我们可以得出结论,该新算法在分类性别方面非常有效。结论:总分类率为97.25%

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