一种用于控制登记和多模态融合的绵羊和山羊分离方法

N. Poh, J. Kittler
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引用次数: 29

摘要

由于数据库中的每个用户都引入了即使设计良好的获取程序和实验协议也无法控制的可变性,因此生物识别性能评估变得困难。因此,系统性能不可避免地依赖于用户。我们明确建议根据用户的表现使用诸如f比率、Fisher比率和d '度量等标准对用户进行排名。这些标准被证明能够以这样一种方式对用户进行分区,使得每个分区的性能相差多达2倍。有了这些标准,就可以评估最佳情况的性能,或者更重要的是,评估最坏情况的性能。虽然实验只在面部、指纹和虹膜生物特征上进行,但我们推测,同一数据库中用户群体之间的这种性能差异在所有生物特征中都表现出来。我们还在这个方向上探索了各种研究途径,包括特定群体的评分归一化、入组时的模型充分性和由用户排名标准控制的多模态融合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A methodology for separating sheep from goats for controlled enrollment and multimodal fusion
Biometric performance assessment is made difficult by virtue of the fact that each user in the database introduces variability that cannot be controlled even with a well designed acquisition procedure and experimental protocol. As a result, the system performance is inevitably user-dependent. We propose explicitly to rank the users according to their performance using criteria such as the F-ratio, the Fisher ratio and the d-prime metric. These criteria are demonstrated to be able to partition the users in such a way that the performance of each partition differs by as much as a factor of 2. Thanks to these criteria, it is possible to assess the performance of the best case or, more importantly, the worst case scenario. While the experiments have been conducted only on face, fingerprint and iris biometrics, we conjecture that such performance discrepancy among the population of users in the same database is exhibited by all biometrics. We also explore various research avenues in this direction, including group-specific score normalization, model adequacy at enrollment and multimodal fusion controlled by a user-ranking criterion.
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