生物识别系统性能的成本曲线分析

Mayra Sacanamboy, B. Cukic
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引用次数: 2

摘要

生物识别分类算法通常提供一系列性能特征来平衡虚假不匹配率和虚假匹配率。然而,通常在选择满足应用要求的阈值时没有明确考虑错误分类所涉成本问题。本文利用代价曲线分析了多人脸和指纹识别算法的识别性能。成本曲线允许在生物识别系统阈值的选择中引入错误分类成本和正品和仿冒品类别比例的先验概率。包含错误分类成本和先验概率很重要,因为它们可能随着时间或生物识别系统部署的位置而变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cost curve analysis of biometric system performance
Biometric classification algorithms typically offer a range of performance characteristics which balance false non-match and false match rates. Nevertheless, the threshold which meets application requirements is usually selected without explicit consideration of cost implications of misclassification. This paper presents the analysis of recognition performance of multiple face and fingerprint algorithms using cost curves. Cost curves allow the introduction of misclassification costs and prior probabilities of proportions of genuine and impostor classes in the selection of biometric system thresholds. The inclusion of misclassification costs and prior probabilities is important since they can either change with time, or with the location where the biometric system is deployed.
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