基于cnn手掌静脉识别的自动生物识别系统

Sin-Ye Jhong, Po-Yen Tseng, Natnuntnita Siriphockpirom, Chih-Hsien Hsia, Ming-Shih Huang, K. Hua, Yung-Yao Chen
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引用次数: 10

摘要

近年来,自动生物特征识别系统(ABIS)在自动识别和数据捕获(AIDC)方面有着广泛的应用,包括自动安全检查、验证个人身份以防止信息泄露或身份欺诈等。随着生物技术的进步,基于生物特征的身份识别系统已经出现在市场上。这些系统要求高精度和易于使用。手掌静脉识别是一种识别手掌静脉特征的生物识别技术。相对于其他特征,手掌静脉识别结果准确,受到了广泛关注。利用高性能的自适应背景滤波技术获取感兴趣区域的掌静脉图像,开发了一种新型的高性能非接触掌静脉识别系统。然后,我们使用改进的卷积神经网络,通过训练和测试来确定最佳识别模型。最后,利用云计算技术在底层嵌入式树莓派平台上实现了所开发的系统。结果表明,该系统可达到96.54%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automated Biometric Identification System Using CNN-Based Palm Vein Recognition
Recently, automated biometric identification system (ABIS) has wide applications involving automatic identification and data capture (AIDC), which includes automatic security checking, verifying personal identity to prevent information disclosure or identity fraud, and so on. With the advancement of biotechnology, identification systems based on biometrics have emerged in the market. These systems require high accuracy and ease of use. Palm vein identification is a type of biometric that identifies palm vein features. Compared with other features, palm vein recognition provides accurate results and has received considerable attention. We developed a novel high-performance and noncontact palm vein recognition system by using high-performance adaptive background filtering to obtain palm vein images of the region of interest. We then used a modified convolutional neural network to determine the best recognition model through training and testing. Finally, the developed system was implemented on the low-level embedded Raspberry Pi platform with cloud computing technology. The results showed that the system can achieve an accuracy of 96.54%.
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