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首页> 外文期刊>Journal of computer sciences >Efficient Multimodal Biometric Authentication Using Fast Fingerprint Verification and Enhanced Iris Features
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Efficient Multimodal Biometric Authentication Using Fast Fingerprint Verification and Enhanced Iris Features

机译:使用快速指纹验证和增强的虹膜功能的高效多模式生物特征认证

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Problem statement: The accuracy of biometric systems varies with the kind of biometric feature used in it. The Unmoral biometric system is prone to interclass variations. Approach: We implement Multimodal biometric systems to overcome the limitations by using multiple pieces of evidence of the same identity. However, the multimodal biometric system is limited to the time constraints due to its multiple processing stages. To improve the speed of authentication in the biometric system with acceptable accuracy, we have introduced a dynamic fingerprint verification technique fused with enhanced iris recognition using the adaptive rank level fusion method. Results: When tested upon the standard biometric dataset the system shows improvement in the False Acceptance Rate (FAR) and Equal Error Rate (EER) curves. Essentially, the time taken for the training and verification phase has a reduction of 10% when compared with the existing systems. Conclusion: The multimodel system has necessarily increased the speed and performance of the verification system especially when tested on slow processing and low memory devices.
机译:问题陈述:生物识别系统的准确性随其中使用的生物识别功能的种类而异。非道德的生物特征识别系统容易发生阶级间的差异。方法:我们实施多模式生物识别系统,以通过使用多个相同身份的证据来克服局限性。然而,由于其多处理阶段,多峰生物测定系统受到时间限制。为了以可接受的精度提高生物识别系统中的身份验证速度,我们引入了一种动态指纹验证技术,该技术使用自适应秩级别融合方法融合了增强的虹膜识别能力。结果:在标准生物特征数据集上进行测试时,系统显示出错误接受率(FAR)和均等错误率(EER)曲线得到了改善。从本质上讲,与现有系统相比,培训和验证阶段所花费的时间减少了10%。结论:多模型系统必须提高了验证系统的速度和性能,尤其是在慢速处理和低内存设备上进行测试时。

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