Rediscovering Minutiae Matching Through One Shot Learning’s Siamese Framework in Poor Quality Footprint Images

Riti Kushwaha;Gaurav Singal;Neeta Nain
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Abstract

Footprint biometrics is one of the emerging techniques, which can be utilized in different security systems. A human footprint has unique traits which is sufficient to recognize any person. Existing work evaluates the shape features and texture features but very few authors have explored minutiae features, hence this article provides a study based on minutiae features. The current State-of-the-art methods utilize machine learning techniques, which suffer from low accuracy in case of poor-quality of data. These machine learning techniques provide approx 97% accuracy while using good quality images but are not able to perform well when we use poor quality images. We have proposed a minutiae matching system based on deep learning techniques which is able to handle samples with adequate noise. We have used Convolution Neural Network for the feature extraction. It uses two different ridge flow estimation methods, i.e., ConvNet-based and dictionary-based. Furthermore, fingerprint-matching metrics are used for footprint feature evaluation. We initially employed a contrastive-based loss function, resulting in an accuracy of 56%. Subsequently, we adapted our approach by implementing a distance-based loss function, which improved the accuracy to 66%.
在质量较差的足迹图像中通过单次学习的连体框架重新发现细节匹配
脚印生物识别技术是一种新兴技术,可用于不同的安全系统。人的脚印具有独特的特征,足以识别任何人。现有的研究对形状特征和纹理特征进行了评估,但很少有学者对细微特征进行研究,因此本文提供了基于细微特征的研究。目前最先进的方法采用机器学习技术,但在数据质量较差的情况下准确率较低。这些机器学习技术在使用质量较好的图像时可提供约 97% 的准确率,但在使用质量较差的图像时则表现不佳。我们提出了一种基于深度学习技术的微特征匹配系统,它能够处理具有足够噪声的样本。我们使用卷积神经网络进行特征提取。它使用了两种不同的脊流估计方法,即基于 ConvNet 和基于字典的方法。此外,我们还使用指纹匹配指标来评估足迹特征。我们最初采用了基于对比度的损失函数,结果准确率为 56%。随后,我们调整了方法,采用了基于距离的损失函数,从而将准确率提高到 66%。
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CiteScore
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