P-Score:分数水平多生物特征融合的性能标准化和评估

N. Damer, F. Boutros, Philipp Terhörst, Andreas Braun, Arjan Kuijper
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引用次数: 4

摘要

对于不同的融合、分类和决策应用程序,规范化是一个重要的步骤。以前的标准化方法考虑将来自不同来源的值纳入一个共同的范围或分布特征。在这项工作中,我们提出了一种新的归一化方法,将值转移到一个归一化空间中,在这个空间中,它们在二进制决策中的相对性能在它们的整个范围内是一致的。多生物特征验证是一个典型的问题,其中来自不同来源的信息被归一化和融合以做出二值决策,因此是一个很好的平台来评估所提出的归一化。我们对两个公开可用的数据库进行了评估,并表明我们提出的归一化解决方案始终优于最先进的和最佳实践方法,例如,与广泛使用的和规则融合下的z-score归一化相比,将0.01%的错误拒取率降低了60-75%。
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P-Score: Performance Aligned Normalization and an Evaluation in Score-Level Multi-Biometric Fusion
Normalization is an important step for different fusion, classification, and decision making applications. Previous normalization approaches considered bringing values from different sources into a common range or distribution characteristics. In this work we propose a new normalization approach that transfers values into a normalized space where their relative performance in binary decision making is aligned across their whole range. Multi-biometric verification is a typical problem where information from different sources are normalized and fused to make a binary decision and therefore a good platform to evaluate the proposed normalization. We conducted an evaluation on two publicly available databases and showed that the normalization solution we are proposing consistently outperformed state-of-the-art and best practice approaches, e.g. by reducing the false rejection rate at 0.01% false acceptance rate by 60-75% compared to the widely used z-score normalization under the sum-rule fusion.
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