An improved method of large angle palm recognition rate based on UNet depth prediction and projection transformation

Runjia Li
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Abstract

In the development of modern science and technology innovation, identity authentication technology in daily life and work in the field of application more and more, among which fingerprint recognition, facial recognition, voice recognition, vein recognition, iris recognition, etc., are not easy to forge the characteristics, so it is the main content of research scholars in various countries. Especially for palmar vein recognition technology, because this recognition technology has the characteristics of stability and uniqueness, the characteristic area of palmar vein is large, so more and more research topics are proposed. In the traditional sense of the hand vein recognition method, although has obtained the high accuracy, but need to manually during the recognition image design and gathering more features, need to study during the data preprocessing high quality hand vein image, so how to make use of artificial intelligence algorithm is optimized, are the major risks to the present study. In this paper, based on the understanding of the development status of palm vein recognition technology and the basic principle of Unet depth prediction and projection transformation, a palm vein recognition method based on feature fusion network is proposed. The final results show that compared with the traditional palm-vein recognition method, the proposed algorithm has stronger features, expression ability and generalization ability.
基于UNet深度预测和投影变换的大角度手掌识别率改进方法
在现代科技创新的发展中,身份认证技术在日常生活和工作领域的应用越来越多,其中指纹识别、面部识别、语音识别、静脉识别、虹膜识别等,都具有不易伪造的特点,因此是各国学者研究的主要内容。特别是掌纹静脉识别技术,由于这种识别技术具有稳定性和唯一性的特点,掌纹静脉的特征面积较大,因此越来越多的研究课题被提出。在传统意义上的手静脉识别方法中,虽然已经获得了较高的准确率,但是在识别过程中需要人工对图像进行设计和采集更多的特征,在数据预处理过程中需要研究高质量的手静脉图像,因此如何利用人工智能对算法进行优化,是目前研究的主要风险。本文在了解手掌静脉识别技术发展现状的基础上,结合Unet深度预测和投影变换的基本原理,提出了一种基于特征融合网络的手掌静脉识别方法。最终结果表明,与传统的掌纹识别方法相比,本文算法具有更强的特征、表达能力和泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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