Fingerprint recognition using convolution neural network with inversion and augmented techniques

Reena Garg , Gunjan Singh , Aditya Singh , Manu Pratap Singh
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Abstract

Fingerprints are considered as one of the most important and prominent feature for an individual identification. Due to their consistency and reliability in biometric feature identification, they are most widely used for biometric recognition systems. In these systems, the relevant feature extraction plays important role in achieving required classification accuracy. In recent time, deep learning techniques are being used for fingerprint recognition with more accuracy and efficient results. Major difficulty which has been reported in previous researches, is the limited size of samples. Therefore, we propose two approaches, inversion and multi augmentation to augment the sample size with newly generated images for each feature map. Besides this, multiple networks are used simultaneously for feature extraction from newly generated images in parallel mode. Deep neural network architectures are used with proposed inversion methods and multi augmentation methods to classify the samples of fingerprints for personnel identification and verification. Pre-trained deep convolutional models like VGG16, VGG19, ResNet50 and InceptionV3 are fine-tuned with new processed fingerprint images for feature extraction and classification. The collective samples of fingerprints have been classified into 10 classes. The simulation results have been obtained with different optimizers and it has been observed that VGG 19 model exhibits the accuracies of 88 % and 93 % with inversion and multi augmentation approaches respectively. Whereas, VGG16 model exhibits 93 % with inversion approach and 97 % with multi augmentation approach. Thus, the proposed approach exhibits the accuracy up to 97 % with VGG16 model which is significantly much higher than that of any other model with the same dataset FVC2000_DB4.

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使用反演和增强技术的卷积神经网络识别指纹
指纹被认为是个人身份识别中最重要、最突出的特征之一。由于其在生物特征识别中的一致性和可靠性,指纹被广泛用于生物识别系统。在这些系统中,相关的特征提取对达到所需的分类准确性起着重要作用。近来,深度学习技术被用于指纹识别,并取得了更高的精度和效率。以往研究中提到的主要困难是样本数量有限。因此,我们提出了反转和多重增强两种方法,为每个特征图使用新生成的图像来增加样本量。除此之外,我们还同时使用多个网络,以并行模式从新生成的图像中进行特征提取。深度神经网络架构与所提出的反转方法和多重增强方法配合使用,可对指纹样本进行分类,用于人员识别和验证。预先训练好的深度卷积模型,如 VGG16、VGG19、ResNet50 和 InceptionV3,与新处理的指纹图像进行微调,以提取特征并进行分类。所有指纹样本被分为 10 类。不同优化器的模拟结果显示,VGG 19 模型采用反转和多重增强方法,准确率分别为 88% 和 93%。而 VGG16 模型在使用反演方法时的准确率为 93%,在使用多重增强方法时的准确率为 97%。因此,在使用相同数据集 FVC2000_DB4 的情况下,拟议方法的 VGG16 模型的准确率高达 97%,远远高于其他任何模型。
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