Method to Assess the Temporal Persistence of Potential Biometric Features: Application to Oculomotor, and Gait-Related Databases

09/13/2016
by   Lee Friedman, et al.
0

Although temporal persistence, or permanence, is a well understood requirement for optimal biometric features, there is no general agreement on how to assess temporal persistence. We suggest that the best way to assess temporal persistence is to perform a test-retest study, and assess test-retest reliability. For ratio-scale features that are normally distributed, this is best done using the Intraclass Correlation Coefficient (ICC). For 10 distinct data sets (8 eye-movement related, and 2 gait related), we calculated the test-retest reliability ('Temporal persistence') of each feature, and compared biometric performance of high-ICC features to lower ICC features, and to the set of all features. We demonstrate that using a subset of only high-ICC features produced superior Rank-1-Identification Rate (Rank-1-IR) performance in 9 of 10 databases (p = 0.01, one-tailed). For Equal Error Rate (EER), using a subset of only high-ICC features produced superior performance in 8 of 10 databases (p = 0.055, one-tailed). In general, then, prescreening potential biometric features, and choosing only highly reliable features will yield better performance than lower ICC features or than the set of all features combined. We hypothesize that this would likely be the case for any biometric modality where the features can be expressed as quantitative values on an interval or ratio scale, assuming an adequate number of relatively independent features.

READ FULL TEXT
research
07/29/2017

Synthetic Database for Evaluation of General, Fundamental Biometric Principles

We create synthetic biometric databases to study general, fundamental, b...
research
06/14/2019

The Linear Relationship between Temporal Persistence, Number of Independent Features and Target EER

If you have a target level of biometric performance (e.g. EER = 5 how ma...
research
01/24/2020

Why Temporal Persistence of Biometric Features is so Valuable for Classification Performance

It is generally accepted that relatively more permanent (i.e., more temp...
research
11/12/2021

Robust Analytics for Video-Based Gait Biometrics

Gait analysis is the study of the systematic methods that assess and qua...
research
04/04/2023

A False Sense of Privacy: Towards a Reliable Evaluation Methodology for the Anonymization of Biometric Data

Biometric data contains distinctive human traits such as facial features...
research
09/14/2016

Learning Robust Features for Gait Recognition by Maximum Margin Criterion

In the field of gait recognition from motion capture data, designing hum...
research
05/08/2023

The Importance of the Signal/Noise Distinction for Eye Movement Biometric Performance

Prior research states that sine-wave frequencies below 100 Hz carry the ...

Please sign up or login with your details

Forgot password? Click here to reset