首页> 外文会议>Technologies for Homeland Security, 2009. HST '09 >Biometric sensor image fusion for identity verification: A case study with wavelet-based fusion rules graph matching
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Biometric sensor image fusion for identity verification: A case study with wavelet-based fusion rules graph matching

机译:用于身份验证的生物识别传感器图像融合:以基于小波的融合规则图匹配为例

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Multi-biometric systems have many advantages over the uni-biometric systems. However, multi-biometric systems lacking in many respects, such as multimodal systems not only acquire relevant and viable information for fusion, but also acquire some irrelevant and redundant information which are associated to the feature sets or with the match score sets, and this may lead to the resultant performance to be degraded. This paper deals with a biometric authentication system that uses image fusion convention for face and palm-print images using wavelet decomposition. The proposed work uses a few selected wavelet fusion rules subject to fusion of biometric face and palm-print images at low-level. While fusion is accomplished with two high-resolution biometric images, SIFT operator is used to extract invariant features from spatially enhanced fused image. Finally, identity is verified by probabilistic relational graph with posteriori attributes matching between a pair of fused images. Matching is employed by searching corresponding feature points in both the database and query fused images using the iterative relaxation algorithm. The experimental results show that the proposed multimodal biometric system through image fusion outperforms feature level fusion methods, while all the fusion schemes are implemented in the same feature space, i.e., in the scale invariant feature space.
机译:与单生物学系统相比,多生物学系统具有许多优势。但是,在许多方面都缺乏的多生物系统,例如多模式系统,不仅会获取融合的相关信息和可行信息,而且还会获取与特征集或匹配分数集相关的一些不相关和多余的信息,这可能导致结果性能下降。本文讨论了一种生物特征认证系统,该系统将图像融合约定用于通过小波分解的面部和掌纹图​​像。拟议的工作使用了一些选定的小波融合规则,这些规则会在较低级别上融合生物特征识别的面部和掌纹图​​像。虽然融合是用两个高分辨率生物特征图像完成的,但SIFT运算符用于从空间增强的融合图像中提取不变特征。最终,通过概率关系图验证身份,并在一对融合图像之间匹配后验属性。通过在数据库中搜索对应的特征点并使用迭代松弛算法来查询融合图像来采用匹配。实验结果表明,所提出的通过图像融合的多峰生物特征识别系统的性能优于特征级融合方法,而所有融合方案均在相同的特征空间(即尺度不变特征空间)中实现。

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