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Performance evaluation of no-reference image quality metrics for face biometric images

机译:面部生物特征图像无参考图像质量度量的性能评估

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摘要

The accuracy of face recognition systems is significantly affected by the quality of face sample images. The recent established standardization proposed several important aspects for the assessment of face sample quality. There are many existing no-reference image quality metrics (IQMs) that are able to assess natural image quality by taking into account similar image-based quality attributes as introduced in the standardization. However, whether such metrics can assess face sample quality is rarely considered. We evaluate the performance of 13 selected no-reference IQMs on face biometrics. The experimental results show that several of them can assess face sample quality according to the system performance. We also analyze the strengths and weaknesses of different IQMs as well as why some of them failed to assess face sample quality. Retraining an original IQM by using face database can improve the performance of such a metric. In addition, the contribution of this paper can be used for the evaluation of IQMs on other biometric modalities; furthermore, it can be used for the development of multimodality biometric IQMs. (c) The Authors. Published by SPIE under a Creative Commons Attribution 3.0 Unported License. Distribution or reproduction of this work in whole or in part requires full attribution of the original publication, including its DOI.
机译:人脸识别系统的准确性受人脸样本图像质量的影响。最近建立的标准化提出了评估面部样品质量的几个重要方面。现有许多无参考图像质量度量(IQM),它们可以通过考虑标准化中引入的类似的基于图像的质量属性来评估自然图像质量。但是,很少考虑这种指标是否可以评估面部样本质量。我们评估了面部生物识别技术上选择的13种无参考IQM的性能。实验结果表明,其中一些可以根据系统性能评估面部样本质量。我们还分析了不同IQM的优缺点,以及为什么其中一些未能评估面部样本质量的原因。通过使用人脸数据库重新训练原始IQM可以提高此类指标的性能。此外,本文的贡献可用于评估其他生物识别方式上的IQM。此外,它还可用于开发多模态生物特征IQM。 (c)作者。由SPIE根据Creative Commons Attribution 3.0 Unported License发布。分发或复制此作品的全部或部分,需要对原始出版物(包括其DOI)进行完全归因。

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