Hand geometry: a new approach for feature extraction

Guilherme Boreki, A. Zimmer
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引用次数: 39

Abstract

This work presents a complete control access system based on the hand geometry, a hardware key and a vital sign detector. The circuitry reads the hardware key and the heartbeat in order to confirm the identity of the author given by the analysis of the hand image. The presented system distinguish itself from other similar biometric systems mainly because of the feature extraction process which is based on the analysis of the curvature profile of the image, making the system invariant to the rotation and translation of the hand. This makes unnecessary the use of any kind of restriction devices such as pins or pegs to position the hand. FAR rates as low as 0.8% were obtained by the use of simple weighted geometric features on a database of more than 360 hand images.
手几何:一种特征提取的新方法
本文提出了一个完整的基于手部几何图形、硬件钥匙和生命体征检测器的控制访问系统。电路读取硬件按键和心跳,通过分析手的图像来确认作者的身份。该系统区别于其他同类生物识别系统的主要原因是基于图像曲率轮廓分析的特征提取过程,使系统对手的旋转和平移保持不变。这使得不需要使用任何种类的限制装置,如大头针或钉子来定位手。使用简单加权几何特征对超过360张手图像的数据库进行识别,其识别率低至0.8%。
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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