University of Wollongong, Wollongong, Australia.
China Foreign Affairs University, Beijing, China.
Comput Intell Neurosci. 2023 Mar 1;2023:8389193. doi: 10.1155/2023/8389193. eCollection 2023.
With the continuous development of computer technology, many institutions in society have higher requirements for the efficiency and reliability of identification systems. In sectors with a high-security level, the use of traditional key and smart card system has been replaced by the identification system of biometric technology. The use of fingerprint and face recognition in biometric technology is a biometric technology that does not constitute an infringement on the human body and is convenient and reliable. The biometric technology has been continuously improved, and the existing biometric technologies are based on unimodal biometric features. The unimodal biometric technology has its own limitations such as proposing single information and checking data affected by the environment, which makes it difficult for the technology to play its advantages in practical applications. In this paper, we use CNN-SRU deep learning to preprocess a large amount of complex data in the perceptual layer. The data collected in the perceptual layer are first transmitted to CNN convolutional neural network for simple classification and analysis and then arrives at the LSTM session to update again and optimize the screening to improve the biometric performance. The results show that the CNN-LSTM, CNN-GRU, and CNN algorithms show a decreasing trend in accuracy under the three error evaluation criteria of RMSE, MAE, and ME, from 0.35 to 0.07, 0.58 to 0.19, and 0.38 to 0.15, respectively. The recognition rate of multifeature fusion can reach 95.2%; the recognition efficiency of the multibiometric authentication system and accuracy rate has been significantly improved. It provides a strong guarantee for the regional standardization, high integration, generalization, and modularization of multibiometric identification system application products.
随着计算机技术的不断发展,社会上的许多机构对识别系统的效率和可靠性有了更高的要求。在安全级别较高的领域,传统的钥匙和智能卡系统已被生物识别技术的识别系统所取代。生物识别技术中使用的指纹和人脸识别是一种不构成对人体侵犯、方便可靠的生物识别技术。生物识别技术在不断改进,现有的生物识别技术都是基于单一模式的生物特征。单一模式的生物识别技术存在着信息单一、检测数据易受环境影响等自身局限性,使得该技术在实际应用中难以发挥优势。本文利用 CNN-SRU 深度学习在感知层预处理大量复杂数据,感知层采集的数据首先传输到 CNN 卷积神经网络进行简单分类和分析,然后到达 LSTM 会话进行再次更新和优化筛选,以提高生物识别性能。实验结果表明,在 RMSE、MAE 和 ME 三种误差评价标准下,CNN-LSTM、CNN-GRU 和 CNN 算法的准确率呈下降趋势,分别从 0.35 下降到 0.07、0.58 下降到 0.19 和 0.38 下降到 0.15。多特征融合的识别率可达 95.2%;多生物认证系统的识别效率和准确率得到了显著提高,为多生物识别系统应用产品的区域标准化、高集成化、通用化、模块化提供了有力保障。