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Data Uncertainty Learning in Face Recognition

Jie Chang, Zhonghao Lan, Changmao Cheng, Yichen Wei

2020294 citationsDOI

Abstract

Modeling data uncertainty is important for noisy images, but seldom explored for face recognition. The pioneer work, PFE, considers uncertainty by modeling each face image embedding as a Gaussian distribution. It is quite effective. However, it uses fixed feature (mean of the Gaussian) from an existing model. It only estimates the variance and relies on an ad-hoc and costly metric. Thus, it is not easy to use. It is unclear how uncertainty affects feature learning. This work applies data uncertainty learning to face recognition, such that the feature (mean) and uncertainty (variance) are learnt simultaneously, for the first time. Two learning methods are proposed. They are easy to use and outperform existing deterministic methods as well as PFE on challenging unconstrained scenarios. We also provide insightful analysis on how incorporating uncertainty estimation helps reducing the adverse effects of noisy samples and affects the feature learning.

Topics & Concepts

Computer scienceFeature (linguistics)Artificial intelligenceFacial recognition systemMachine learningEmbeddingVariance (accounting)Metric (unit)Face (sociological concept)GaussianPattern recognition (psychology)Gaussian processProbability distributionMathematicsStatisticsEngineeringSocial sciencePhysicsOperations managementAccountingLinguisticsBusinessSociologyPhilosophyQuantum mechanicsFace recognition and analysisFace and Expression RecognitionDomain Adaptation and Few-Shot Learning
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