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Bayesian Belief models for integrating match scores with liveness and quality measures in a fingerprint verification system

机译:贝叶斯的信仰模式,用于将匹配分数与指纹验证系统中的情感和质量措施集成

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Recent research has sought to improve the resilience of fingerprint verification systems to spoof attacks by combining match scores with both liveness measures and image quality in a learning-based fusion framework. Designing such a fusion framework is challenging because quality and liveness measures can impact the match scores and, therefore, the influence of these variables on the match score has to be modelled. Further, these measures themselves are influenced by many latent factors, such as the fabrication material used to generate fake fingerprints. We advance the state-of-the-art by proposing two Bayesian Belief Network (BBN) models that can utilize these measures effectively, by appropriately modelling the relationship between quality, liveness measure and match scores with the consideration of latent variables. We demonstrate the efficacy of the proposed models on the LivDet 2011 fingerprint spoof dataset.
机译:最近的研究试图通过在基于学习的融合框架中结合匹配分数来提高指纹验证系统的恢复能力,以使匹配分数和图像质量相结合。设计这种融合框架是具有挑战性的,因为质量和活力措施可能会影响匹配分数,因此,必须建模这些变量对匹配分数的影响。此外,这些措施本身受到许多潜在因子的影响,例如用于产生假指纹的制造材料。我们通过提出两个贝叶斯信仰网络(BBN)模型来提高最先进的,该模型可以通过适当地建模质量,活力测量和匹配分数与潜在变量之间的关系来利用这些措施。我们展示了拟议模型在Livdet 2011指纹欺诈数据集上的效果。

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