AIDB Daily Papers
A-Live:汎用センサーで捉える神経筋微細運動シグネチャによる受動的ライブネス検出
※ 日本語タイトル・ポイントはAIによる自動生成です。正確な内容は原論文をご確認ください。
ポイント
- 本研究では、汎用デバイスのIMU信号から人間の神経筋微細運動を捉え、受動的なライブネス検出を行うフレームワークA-Liveを提案した。
- 既存手法の限界を克服し、対話不要でスケーラブルなライブネス検出を実現することで、AIエージェントによるなりすまし脅威への対応を目指す。
- A-Liveは99.5%以上の精度を達成し、神経筋微細運動シグネチャが新たなライブネス検出の基盤となることを実証した。
Abstract
Liveness detection has evolved from a safeguard against presentation and replay attacks in biometric authentication to a broader requirement for distinguishing human users from non-human agents in modern digital systems. The emergence of generative and agentic AI further amplifies this need, positioning liveness as a fundamental security primitive. Existing approaches face key limitations, including reliance on explicit user interaction, specialized hardware, vulnerability to increasingly realistic spoofing, and limited scalability in real-world deployments. We present A-Live, a passive liveness detection framework that operates solely on inertial measurement unit (IMU) signals available in commodity devices. A-Live is based on the observation that neuromuscular micro-motions inherent to human motor control produce subtle but measurable signatures in inertial data, which are often treated as noise in prior work. We design a lightweight feature extraction pipeline and a compact classifier suitable for real-time on-device deployment, and introduce a controllable physical micro-motion platform to evaluate robustness against engineered non-human motion. Extensive evaluation across Android and iOS devices, including both automated and real-user settings, shows that A-Live achieves over 99.5% accuracy with low false acceptance and rejection rates. Our results demonstrate that neuromuscular micro-motion signatures provide a scalable and passive foundation for liveness detection under emerging AI-driven threat models.
Paper AI Chat
この論文のPDF全文を対象にAIに質問できます。
質問の例: