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A Competent Algorithm for Enhancing Low-Quality Finger Vein Images Using Fuzzy Theory

机译:一种使用模糊理论增强低质量手指静脉图像的能力算法

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摘要

Soft computing methods and the fuzzy theoretic approaches, in particular, are widely known for their ability to tackle the uncertainties and vagueness that exist in image processing problems. This paper puts forward a distinctive enhancement algorithm for finger vein biometric images in which interval type-2 fuzzy sets are used. Finger vein biometrics is one of the latest reliable biometric systems that make use of the uniqueness of the finger vein patterns of individuals. Low contrast, blur, or noise often result in the lower quality of the captured finger vein images. For efficient enhancement of the finger vein images, interval type-2 fuzzy set is presented in this work and Einstein T-conorm is suggested for type reduction by combining the upper and lower membership functions. The performance assessment of the proposed algorithm is done by estimating the linear index of fuzziness and entropy. The experiments are performed using different vein pattern images, and the outcomes are analyzed by comparing with the existing methods. The performance evaluation visibly exhibits the efficiency of the recommended method in comparison with the existing methods.
机译:特别是柔软的计算方法和模糊理论方法,尤其是他们解决图像处理问题中存在的不确定性和含量的能力。本文提出了一种特殊的增强算法,用于指静脉生物识别图像,其中使用间隔类型-2模糊组。手指静脉生物识别是最新的可靠性生物识别系统之一,可以利用个人手指静脉模式的唯一性。对比度,模糊或噪音通常会导致捕获的手指静脉图像的较低质量。为了有效增强手指静脉图像,在该工作中提出了间隔类型-2模糊组,并通过组合上下隶属函数来提出Einstein T-Conorm进行类型。通过估计模糊和熵的线性指数来完成所提出的算法的性能评估。使用不同的静脉图案图像进行实验,通过与现有方法进行比较来分析结果。与现有方法相比,性能评估明显表现出推荐方法的效率。

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