On the Adversarial Inversion of Deep Biometric Representations
Gioacchino Tangari, Shreesh Keskar, Hassan Jameel Asghar and, Dali Kaafar

TL;DR
This paper demonstrates that deep biometric embeddings can be inverted under adversarial conditions, allowing attackers to reconstruct raw biometric data and infer original models with high accuracy, challenging assumptions of security.
Contribution
It introduces a novel two-step attack method that infers original DNN models and reconstructs biometric data from embeddings without direct access to the original dataset or model.
Findings
Attack achieves 83-86% accuracy in inferring original models.
Reconstructed biometric data can authenticate with up to 92% accuracy.
Demonstrates vulnerability of biometric embeddings to adversarial inversion.
Abstract
Biometric authentication service providers often claim that it is not possible to reverse-engineer a user's raw biometric sample, such as a fingerprint or a face image, from its mathematical (feature-space) representation. In this paper, we investigate this claim on the specific example of deep neural network (DNN) embeddings. Inversion of DNN embeddings has been investigated for explaining deep image representations or synthesizing normalized images. Existing studies leverage full access to all layers of the original model, as well as all possible information on the original dataset. For the biometric authentication use case, we need to investigate this under adversarial settings where an attacker has access to a feature-space representation but no direct access to the exact original dataset nor the original learned model. Instead, we assume varying degree of attacker's background…
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Taxonomy
TopicsBiometric Identification and Security · Face recognition and analysis · Forensic and Genetic Research
Methodstravel james
