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Self-supervised Auxiliary Learning for Texture and Model-based Hybrid Robust and Fair Featuring in Face Analysis

About

In this work, we explore Self-supervised Learning (SSL) as an auxiliary task to blend the texture-based local descriptors into feature modelling for efficient face analysis. Combining a primary task and a self-supervised auxiliary task is beneficial for robust representation. Therefore, we used the SSL task of mask auto-encoder (MAE) as an auxiliary task to reconstruct texture features such as local patterns along with the primary task for robust and unbiased face analysis. We experimented with our hypothesis on three major paradigms of face analysis: face attribute and face-based emotion analysis, and deepfake detection. Our experiment results exhibit that better feature representation can be gleaned from our proposed model for fair and bias-less face analysis.

Shukesh Reddy, Nishit Poddar, Srijan Das, Abhijit Das• 2024

Related benchmarks

TaskDatasetResultRank
Deepfake DetectionFaceForensics++ c23 (train)
FF c23 Score98.68
31
Deepfake DetectionCross-Domain Evaluation (test)
CDFv1 Score91.93
31
Deepfake DetectionFaceForensics++ (FF) (test)
Average AUC (FF)0.965
22
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