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Densely Connected Convolutional Network Optimized by Genetic Algorithm for Fingerprint Liveness Detection

机译:用遗传算法进行密集连接的卷积网络,用于指纹活度检测

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摘要

Fingerprint liveness detection is an essential module for an accurate and reliable fingerprint identification system. In this paper, a Densely Connected Convolutional Network (DenseNet) is used for fingerprint liveness detection and the genetic algorithm is adopted to optimize the DenseNet structure. Firstly, all images in the experimental database are unified to the same size through ROI extraction based on thinning images, and then used as input data for subsequent classifiers. Secondly, a variable-length real array is subdivided into four gene fragments to characterize the DenseNet structure. We design specific mutation and crossover operators for the evolution of DenseNet population. The optimal structure is found from a large solution space comprising $1.4*10^{19}$ candidates by genetic algorithm after 30 generations of evolution. Finally, the optimal DenseNet model is compared with other state-of-the-art works in detail. The proposed model achieves 98.22% accuracy on the testing set of mixed Livdet dataset. The experimental results show that genetic algorithms can automatically find the optimal structure from the solution space and further exploit the potential of DenseNet, which can help researchers to quickly construct high-performance network structures even if they are not proficient in neural networks. By comparing the average classification error (ACE) value and variance, it can be concluded that the classification performance of the proposed model is more accurate and balanced than other state-of-the-art models.
机译:指纹活动检测是用于准确可靠的指纹识别系统的必要模块。本文使用密集连接的卷积网络(DENSENET)用于指纹活度检测,采用遗传算法优化DYNENET结构。首先,基于细化图像的ROI提取,实验数据库中的所有图像都统一到相同的大小,然后用作后续分类器的输入数据。其次,将可变长度的真实阵列细分为四个基因片段以表征Densenet结构。我们设计特定的突变和交叉运营商,用于DENSENET人口的演变。从包含<内联公式XMLNS:MML =“http://ww.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org http://www.w3.org的大型解决方案空间/ 1999 / xlink“> $ 1.4 * 10 ^ {19} $ 在30代进化后的遗传算法候选候选。最后,将最佳的DenSenet模型与其他最先进的工作进行比较。所提出的模型在混合Livdet数据集的测试集中实现了98.22%的准确性。实验结果表明,遗传算法可以自动找到解决方案空间的最佳结构,进一步利用DenSenet的潜力,这可以帮助研究人员快速构建高性能网络结构,即使它们不精通神经网络。通过比较平均分类误差(ACE)值和方差,可以得出结论,所提出的模型的分类性能比其他最先进的模型更准确和平衡。

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