Considerations on the Evaluation of Biometric Quality Assessment Algorithms
Torsten Schlett, Christian Rathgeb, Juan Tapia, Christoph Busch

TL;DR
This paper critically analyzes the evaluation methods for biometric quality assessment algorithms, focusing on EDC curves and pAUC metrics, and offers insights to improve interpretability, stability, and generalizability of such evaluations across modalities.
Contribution
It provides a detailed analysis of EDC and pAUC evaluation techniques, proposing enhancements for interpretability, stability, and modality independence in biometric quality assessment.
Findings
Higher pAUC discard fraction limits are more stable for rankings.
Normalization of quality scores improves comparability across datasets.
Synthetic and real data analyses support general conclusions.
Abstract
Quality assessment algorithms can be used to estimate the utility of a biometric sample for the purpose of biometric recognition. "Error versus Discard Characteristic" (EDC) plots, and "partial Area Under Curve" (pAUC) values of curves therein, are generally used by researchers to evaluate the predictive performance of such quality assessment algorithms. An EDC curve depends on an error type such as the "False Non Match Rate" (FNMR), a quality assessment algorithm, a biometric recognition system, a set of comparisons each corresponding to a biometric sample pair, and a comparison score threshold corresponding to a starting error. To compute an EDC curve, comparisons are progressively discarded based on the associated samples' lowest quality scores, and the error is computed for the remaining comparisons. Additionally, a discard fraction limit or range must be selected to compute pAUC…
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Taxonomy
TopicsBiometric Identification and Security · Face recognition and analysis
MethodsNetwork On Network
