Authors
Wencheng Yang, Song Wang, Jiankun Hu, Guanglou Zheng, Jucheng Yang, Craig Valli
Publication date
2019/2/21
Journal
IEEE transactions on industrial Informatics
Volume
15
Issue
7
Pages
4244-4253
Publisher
IEEE
Description
With built-in artificial intelligence (AI), edge devices, e.g., smart cameras, can perform tasks like detecting and tracking individuals, which is referred to as edge biometrics. As a driving force for AI, machine/deep learning plays a critical role in edge biometrics. Machine/deep learning based edge biometric systems outperform their nonmachine learning counterpart. However, research shows that artificial neural networks, e.g., convolutional neural networks, are invertible such that adversaries can obtain a certain amount of information about the original inputs/templates. This information leakage is not tolerable for biometric systems because biometric data in the original (raw) templates cannot be reset or replaced. Once compromised, they are lost forever. Therefore, how to prevent original biometric templates from being attacked through inverting deep neural networks is a pressing, but unsolved issue, for deep …
Total citations
20202021202220232024142020105
Scholar articles
W Yang, S Wang, J Hu, G Zheng, J Yang, C Valli - IEEE transactions on industrial Informatics, 2019