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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part B, Cybernetics >Characterization of palmprints by wavelet signatures via directional context modeling
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Characterization of palmprints by wavelet signatures via directional context modeling

机译:通过方向上下文建模通过小波签名表征掌纹

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摘要

The palmprint is one of the most reliable physiological characteristics that can be used to distinguish between individuals. Current palmprint-based systems are more user friendly, more cost effective, and require fewer data signatures than traditional fingerprint-based identification systems. The principal lines and wrinkles captured in a low-resolution palmprint image provide more than enough information to uniquely identify an individual. This paper presents a palmprint identification scheme that characterizes a palmprint using a set of statistical signatures. The palmprint is first transformed into the wavelet domain, and the directional context of each wavelet subband is defined and computed in order to collect the predominant coefficients of its principal lines and wrinkles. A set of statistical signatures, which includes gravity center, density, spatial dispersivity and energy, is then defined to characterize the palmprint with the selected directional context values. A classification and identification scheme based on these signatures is subsequently developed. This scheme exploits the features of principal lines and prominent wrinkles sufficiently and achieves satisfactory results. Compared with the line-segments-matching or interesting-points-matching based palmprint verification schemes, the proposed scheme uses a much smaller amount of data signatures. It also provides a convenient classification strategy and more accurate identification.
机译:掌纹是可用于区分个体的最可靠的生理特征之一。当前的基于掌纹的系统与传统的基于指纹的识别系统相比,更加用户友好,更具成本效益并且需要更少的数据签名。在低分辨率掌纹图像中捕获的主要线条和皱纹提供了足够多的信息来唯一标识一个人。本文提出了一种掌纹识别方案,该方案使用一组统计签名来表征掌纹。首先将掌纹变换到小波域中,并定义和计算每个小波子带的方向上下文,以便收集其主线和皱纹的主要系数。然后定义一组统计签名,包括重心,密度,空间分散性和能量,以使用选定的方向上下文值来表征掌纹。随后开发了基于这些签名的分类和识别方案。该方案充分利用了主纹和明显的皱纹特征,并取得了令人满意的效果。与基于行段匹配或兴趣点匹配的掌纹验证方案相比,该方案使用的数据签名量要少得多。它还提供了方便的分类策略和更准确的标识。

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