利用图像质量评估的假生物特征检测:应用于虹膜、指纹识别

S. Saranya, S. V. Sherline, M. Maheswari
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引用次数: 4

摘要

图像质量评估(IQA)是一种用于图像处理的统计技术,用于判断生物特征样本的真假。该系统的目的是丰富生物特征识别的安全性。本文讨论了IQA的两种不同度量。第一种方法是全参考(FR) IQA,它由2D图像组成,使用高斯滤波技术过滤的参考图像提取不同的图像质量特征。第二个度量是无参考(NR) IQA,用于估计图像的质量水平。最终,需要26个图像质量特征来最小化复杂性。测试样本的质量意味着基于IQA的以下分类过程的结果。本文简要介绍了IQA理论及其实施措施。记录了所选真假图片的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fake biometric detection using image quality assessment: Application to iris, fingerprint recognition
Image Quality Assessment (IQA) is one of the statistical techniques used in image processing to determine whether the biometric sample is real or fake. The objective of the system is to enrich the biometric recognition security. This paper deals with two distinct measures of IQA. The first measure is Full-Reference(FR) IQA consists of a 2D image extracting different image quality features using a reference image which is filtered by a technique called Gaussian filtering. The second measure is No-Reference (NR) IQA used to estimate the quality level of an image. Eventually, 26 image quality features are exacted to minimize the degree of complexity. Quality of test sample implies to results of the following process of classification based on IQA. Presented paper briefly introduces the IQA theory and its measures. Results are documented for the selected real and fake pictures.
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