Human Biometric Identification through Brain Print

Mohita Bassi, Prakriti Triverbi
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引用次数: 3

Abstract

Hidden biometrics features may induce identification of a human being without using the visual structural features. The chances of forgery are reduced substantially through hidden biometrics. We are exploring the capabilities of brain structure to be used as biometric. For this we have estimated uniqueness between the structural features of human brains corresponding to different subjects. So qualifying and quantifying the uniqueness in structure of the brain should lead to subject identification. Subject identification has been done by the brain print extracted from brain structures. The proposed approach is reliable than brain signals based biometric techniques. Our aim is to extract non-linear curves having approximate brain structural information instead of considering brain to be of predefined abstract regular shapes. The results are optimistic as we are able to extract enough number of brain curves from a securely selected slice from complete brain map ensuring the scalability of the approach.
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通过脑纹识别人类生物特征
隐藏的生物特征可以在不使用视觉结构特征的情况下诱导对人的识别。通过隐藏的生物识别技术,伪造的可能性大大降低。我们正在探索将大脑结构用作生物识别的能力。为此,我们估计了不同主体对应的人脑结构特征之间的独特性。因此,对大脑结构的独特性进行定性和量化应该会导致对主体的识别。受试者的识别是通过从大脑结构中提取的脑印来完成的。该方法比基于脑信号的生物识别技术更可靠。我们的目标是提取具有近似大脑结构信息的非线性曲线,而不是将大脑视为预定义的抽象规则形状。结果是乐观的,因为我们能够从完整的脑图中安全地选择切片提取足够数量的脑曲线,确保了方法的可扩展性。
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