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Fingerprint Classification with reduced penetration rate : Using Convolutional Neural Network and DeepLearning

机译:渗透率降低的指纹分类:使用卷积神经网络和深度学习

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Biometric fingerprint feature extraction is a complex process, but it can be simplified by using many applications. When dealing with poor quality fingerprint images the performance of the traditional minutiae detection algorithm found to be deteriorated. Recognizing the fingerprint in a fast and flexible method is hot research topics in these days because of the matured fingerprint identification technology and the massive fingerprint database. This paper mostly focused on fingerprint classification using convolutional neural networks which excludes the need of specific feature extraction process. In such situation, this method proved to predict a class even with poor quality fingerprint image that are commonly rejected by most of the algorithm. This study also gone through to minimize the penetration rate in the database. Various plots of our work shows good accuracy rate and better penetration rate.
机译:生物特征指纹特征提取是一个复杂的过程,但是可以通过使用许多应用程序来简化。当处理质量较差的指纹图像时,传统细节检测算法的性能会降低。由于成熟的指纹识别技术和庞大的指纹数据库,以快速,灵活的方法识别指纹成为当今研究的热点。本文主要关注使用卷积神经网络进行指纹分类,而无需进行特定特征提取过程。在这种情况下,该方法证明即使在质量差的指纹图像(大多数算法通常拒绝使用)的情况下也可以预测类别。这项研究还通过最小化数据库中的渗透率来进行。我们的各种工作图均显示出较高的准确率和更好的穿透率。

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