Introduces interference-aware multi-task unlearning with task-aware gradient projection and instance-level gradient orthogonalization, reducing interference scores by 30.3% and 52.9% on vision benchmarks.
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2026 2verdicts
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Face segmentation for background removal systematically impacts both face recognition performance and morphing attack detection in unconstrained scenarios.
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Interference-Aware Multi-Task Unlearning
Introduces interference-aware multi-task unlearning with task-aware gradient projection and instance-level gradient orthogonalization, reducing interference scores by 30.3% and 52.9% on vision benchmarks.
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On the Impact of Face Segmentation-Based Background Removal on Recognition and Morphing Attack Detection
Face segmentation for background removal systematically impacts both face recognition performance and morphing attack detection in unconstrained scenarios.