使用二元对比上下文向量的掌纹验证

Yi C. Feng, Lei Huang, Chang-ping Liu
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引用次数: 0

摘要

近年来,掌纹识别引起了人们的广泛关注。许多基于纹理编码的算法都达到了较高的精度。然而,由于手姿等条件的变化,它们对局部不稳定区域仍然很敏感。本文提出了一种新的特征提取算法,即二元对比上下文向量(binary contrast context vector, BCCV)来表示局部区域的多个对比分布。由于将局部对比度值形成二值向量,可以更有效地利用对比度上下文进行匹配。此外,利用BCCV方法在匹配前对稳定的局部区域进行自适应阈值屏蔽。我们在公共掌纹数据库上的实验结果表明,与其他两种最先进的方法相比,所提出的BCCV方法的等错误率(EER)更低。
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Palmprint verification using binary contrast context vector
Palmprint recognition has attracted much attention in recent years. Many algorithms based texture coding achieve high accuracy. However they are still sensitive to local unsteady region introduced by variations of hand pose and other conditions. In this paper we proposed a novel feature extraction algorithm, namely binary contrast context vector (BCCV), to represent multiple contrast distribution for a local region. Due to forming the local contrast value into a binary vector, contrast context could be used to match more effectively. Furthermore, by using BCCV we apply an adaptive threshold to mask the stable local region before matching. Our experiment results on public palmprint database shows that the proposed BCCV achieves lower equal error rate (EER) than other two state-of-the-art approaches.
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