CVLGApr 22, 2022

Unknown Face Presentation Attack Detection via Localised Learning of Multiple Kernels

arXiv:2204.10675v115 citationsh-index: 4
Originality Incremental advance
AI Analysis

This addresses security vulnerabilities in biometric systems by improving detection of unknown face spoofing attacks, though it is incremental as it builds on existing ensemble and kernel methods.

The paper tackles face spoofing detection for unknown attack types by developing a localized multiple kernel learning algorithm that adapts to local data structure, showing efficacy in detecting unseen attacks on face PAD datasets.

The paper studies face spoofing, a.k.a. presentation attack detection (PAD) in the demanding scenarios of unknown types of attack. While earlier studies have revealed the benefits of ensemble methods, and in particular, a multiple kernel learning approach to the problem, one limitation of such techniques is that they typically treat the entire observation space similarly and ignore any variability and local structure inherent to the data. This work studies this aspect of the face presentation attack detection problem in relation to multiple kernel learning in a one-class setting to benefit from intrinsic local structure in bona fide face samples. More concretely, inspired by the success of the one-class Fisher null formalism, we formulate a convex localised multiple kernel learning algorithm by imposing a joint matrix-norm constraint on the collection of local kernel weights and infer locally adaptive weights for zero-shot one-class unseen attack detection. We present a theoretical study of the proposed localised MKL algorithm using Rademacher complexities to characterise its generalisation capability and demonstrate the advantages of the proposed technique over some other options. An assessment of the proposed approach on general object image datasets illustrates its efficacy for abnormality and novelty detection while the results of the experiments on face PAD datasets verifies its potential in detecting unknown/unseen face presentation attacks.

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