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Image-based attributes of multi-modality image quality for contactless biometric samples

机译:非接触式生物特征样本的多模态图像质量的基于图像的属性

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The quality of a biometric sample is one of the main criteria having a direct influence on the overall performance of a biometric system. There are many existing researches focusing on biometric sample quality assessment, but different evaluation approaches measure different quality attributes and most of them focus on measuring modality-based attributes. Meanwhile, different biometric modalities seem to be isolated from each other in the image quality evaluation process. Quality metrics that can evaluate multi-modality biometric sample quality is rarely considered. The link of sample quality evaluation between different modalities can be established by using image-based quality metrics, which are able to assess image-based quality attributes. This could be the solution of developing multi-modality biometric sample quality evaluation approaches especially when the fingerprint acquisition sensor becomes contactless. In order to investigate the common framework of biometric sample quality assessment between contactless fingerprint, face, and iris, we will first review the commonly used image-based quality attributes for three modalities by surveying existing literature. Based on the survey, we identify and categorize these attributes to propose a refined selection of important ones for the assessment of multi-modality biometric sample quality.
机译:生物特征样本的质量是直接影响生物特征系统整体性能的主要标准之一。现有的许多研究都集中在生物特征样本质量评估上,但是不同的评估方法测量的是不同的质量属性,并且大多数研究重点是在测量基于模态的属性。同时,在图像质量评估过程中,似乎将不同的生物特征模态彼此隔离。很少考虑可以评估多模式生物特征样本质量的质量特征。可以通过使用基于图像的质量度量标准来建立不同模态之间的样本质量评估的链接,该图像能够评估基于图像的质量属性。这可能是开发多模式生物特征样本质量评估方法的解决方案,尤其是在指纹采集传感器变为非接触式时。为了研究非接触式指纹,面部和虹膜之间生物特征样本质量评估的通用框架,我们将首先通过调查现有文献来回顾三种模式的常用基于图像的质量属性。在调查的基础上,我们对这些属性进行了识别和分类,以提出重要属性的精选,以评估多模式生物特征样本的质量。

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