首页> 外文会议>Advances in Engineering, Science and Management (ICAESM), 2012 International Conference on >Multimodal biometric recognition using iris feature extraction and palmprint features
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Multimodal biometric recognition using iris feature extraction and palmprint features

机译:利用虹膜特征提取和掌纹特征进行多模式生物特征识别

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A Biometric system is essentially a pattern recognition system that makes use of biometric traits to recognize individuals. Authentication systems built on only one biometric modality may not fulfill the requirements of demanding applications in terms of properties such as performance, acceptability and distinctiveness. Most of the unimodal biometrics systems have problems such as noise in collected data, intra-class variations, inter-class variations, non universality etc. Some of these limitations can be overcome by multiple source of information for establishing identity; such systems are known as multimodal biometric systems. In this paper a multi modal biometric system of iris and palm print based on Wavelet Packet Analysis is described. The most unique phenotypic feature visible in a person''s face is the detailed texture of each eye''s iris. Palm is the inner surface of a hand between the wrist and the fingers. Palmprint is referred to principal lines, wrinkles and ridges on the palm. The visible texture of a person''s iris and palm print is encoded into a compact sequence of 2-D wavelet packet coefficients, which generate a “feature vector code”. In this paper, we propose a novel multi-resolution approach based on Wavelet Packet Transform (WPT) for texture analysis and recognition of iris and palmprint. The development of this approach is motivated by the observation that dominant frequencies of iris texture are located in the low and middle frequency channels. With an adaptive threshold, WPT sub images coefficients are quantized into 1, 0 or −1 as iris signature. This signature presents the local information of different irises. By using wavelet packets the size of the biometric signature of code attained is 960 bits. The signature of the new pattern is compared against the stored pattern after computing the signature of new input pattern. Identification is performed by computing the hamming distance.
机译:生物识别系统本质上是一种利用生物特征来识别个人的模式识别系统。仅建立在一种生物特征识别方式上的身份验证系统可能无法满足要求苛刻的应用程序的性能,可接受性和独特性等要求。大多数单峰生物识别系统都存在诸如收集数据中的噪声,类内变异,类间变异,非通用性等问题。这样的系统被称为多峰生物识别系统。本文描述了一种基于小波包分析的虹膜和掌纹多模态生物识别系统。人脸最明显的表型特征是每只眼睛的虹膜的细致纹理。手掌是手腕在手腕和手指之间的内表面。掌纹是指掌上的主要线条,皱纹和山脊。人的虹膜和掌纹的可见纹理被编码为二维小波包系数的紧凑序列,从而生成“特征向量代码”。在本文中,我们提出了一种基于小波包变换(WPT)的新颖的多分辨率方法,用于虹膜和掌纹的纹理分析和识别。通过观察虹膜纹理的主频位于低频和中频通道中,可以推动这种方法的发展。利用自适应阈值,WPT子图像系数被量化为1、0或-1作为虹膜签名。该签名显示了不同虹膜的局部信息。通过使用小波包,所获得的代码的生物特征签名的大小为960位。在计算新输入模式的签名之后,将新模式的签名与存储的模式进行比较。通过计算汉明距离来执行识别。

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