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On Efficiency and Effectiveness Tradeoffs in High-Throughput Facial Biometric Recognition Systems

机译:论高通量面部生物识别系统中的效率和有效权衡

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This research discusses the evaluation of biometric systems that are designed to process hundreds to tens of thousands of individuals in short time spans. We propose a method for evaluating a system's performance across capture attempts for the purpose of identifying characteristics that are advantageous in these high-throughput environments. We also present a novel modification to the traditionally accepted biometric performance metrics of failure-to-acquire, and true-match rate. Namely, this paradigm shift holds that these metrics are a function of time and, as such, vary with the time available for a biometric system to interact with a user. This research demonstrates the utility of these time-based metrics in evaluating the performance of multiple, commercially available, high-throughput systems. We show that different biometric systems have notably different time-based performance curves using a corpus of data collected during the 2018 Department of Homeland Security, Science and Technology Directorate (DHS S&T) Biometric Technology Rally. These curves and the deviations between them are useful when quantifying the suitability of a technology, evaluated via scenario testing, for deployment in an operational environment where the throughput of the target population is a key performance parameter.
机译:本研究讨论了对旨在在短时间内跨越数十万个个体的生物识别系统的评估。我们提出了一种方法,用于评估系统在捕获尝试跨捕获尝试的性能的方法,以识别这些高吞吐量环境中有利的特征。我们还向传统上接受的生物识别性能指标呈现了一个新颖的修改,以及真正的比赛率。即,这种范式偏移将这些度量标准是时间的函数,因此随着生物识别系统与用户交互的可用时间而变化。该研究表明了这些基于时间的度量的效用评估了多个,商业上可用的高吞吐量系统的性能。我们表明,不同的生物识别系统使用2018年国土安全部门(科学技术局(DHS S&T)生物识别技术集会收集的数据集团的基于数据的基于时间的性能曲线。这些曲线和它们之间的偏差在量化通过场景测试评估的技术的适用性时非常有用,以便在目标群体的吞吐量是关键性能参数的操作环境中进行部署。

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