N. Damer, F. Boutros, Philipp Terhörst, Andreas Braun, Arjan Kuijper
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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.