Li / Lü / Qin | Deep Learning Models for Continuous Authentication on Mobile Devices | Buch | 978-0-443-49415-4 | www.sack.de

Buch, Englisch, 400 Seiten, Format (B × H): 191 mm x 235 mm

Li / Lü / Qin

Deep Learning Models for Continuous Authentication on Mobile Devices


Erscheinungsjahr 2027
ISBN: 978-0-443-49415-4
Verlag: Elsevier Science

Buch, Englisch, 400 Seiten, Format (B × H): 191 mm x 235 mm

ISBN: 978-0-443-49415-4
Verlag: Elsevier Science


Sensor-based continuous authentication has emerged as a critical approach for strengthening mobile security, enabling persistent user verification without disrupting device usage. However, the field faces significant hurdles, including limited training data, complex feature representation, environmental noise, and the strict resource constraints of mobile hardware.

Deep Learning Models for Continuous Authentication on Mobile Devices provides a unified and structured treatment of data-driven continuous authentication, presenting a systematic study of sensor-based continuous authentication on mobile devices, focusing on modern machine learning and deep learning techniques. It guides readers in designing, analyzing, and deploying reliable systems that effectively balance security, robustness, and computational efficiency. Featuring data augmentation strategies for data scarcity, multi-sensor feature fusion, discriminative feature learning via two-stream CNNs, data synthesis using conditional Wasserstein GANs, lightweight networks for efficient deployment, neural architecture search for automated optimization, and neuromorphic computing with spiking neural networks,

Deep Learning Models for Continuous Authentication on Mobile Devices balances methodological rigor with practical system design, offering robust solutions for real-world mobile security.

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Weitere Infos & Material


1. SensorAuth: Data Augmentation for Smartphone Authentication
2. FusionAuth: Feature Fusion Strategies for Mobile Authentication
3. SCANet: Two-Stream CNNs for Multimodal Behavioral Biometrics
4. CAGANet: GAN-Enhanced CNN Models for Robust Authentication
5. DeFFusion: Deep Feature Fusion with Convolutional Networks
6. SearchAuth: Neural Architecture Search for Authentication Model
7. ADFFDA: Adaptive Deep Feature Fusion with Augmented Data
8. SNNAuth: Spiking Neural Networks for Efficient Authentication


Qin, Huafeng
Huafeng Qin received the B.Sc. degree from the School of Mathematics and Physics and the M.Eng. degree from the College of Electronic and Automation, Chongqing University of Technology, China, and the Ph.D. degree from the College of Opto-Electronic Engineering, Chongqing University, China. He was a visiting student at Nanyang Technological University, Singapore, for 12 months, and subsequently a postdoctoral researcher for two years at Université Paris-Saclay, France. He is currently a Professor with the National Research Base of Intelligent Manufacturing Service, Chongqing Technology and Business University, China. His research interests include biometrics (e.g., vein, face, and gait recognition) and machine learning.

Li, Yantao
Yantao Li received the Ph.D. degree in computer science and technology from Chongqing University, Chongqing, China, in December 2012. He is currently a tenure-track Assistant Professor with the College of Computer Science, Chongqing University, Chongqing, China. He received the Best Paper Award from IEEE Internet Computing in 2022. He was a recipient of the Outstanding Ph.D. Thesis Award, Chongqing, in 2014, and the Outstanding Master's Thesis Award, in 2011. His research interests include mobile computing and security, the Internet of Things, sensor networks, and ubiquitous computing. Prof. Li currently serves as an Associate Editor for the IEEE Internet of Things Journal (IoT-J). His main research interests include machine learning, networked control systems, and decentralized algorithm. He has published more than 40 research papers.

Lü, Qingguo
Qingguo Lü is a Graduate Research Assistant at Southwest University, Chongqing, China, where he is currently pursuing his Ph.D. degree in Computational Intelligence and Information Processing. His research interests include privacy protection of networked systems, Distributed Optimization, Neurodynamics, and Smart Grids.

Hu, Hailong
Hailong Hu received his Ph.D. degree from the University of Luxembourg, and both his Master and Bachelor degrees from Southwest University. He is currently an Assistant Professor at Chongqing Technology and Business University. His research interests include trustworthy AI and biometrics. His work has been published in leading international journals and conferences such as TIFS, TAI, TOSN, and IoT-J. He has received two Best Paper Honorable Mention Awards (ACSAC 2021 and IEEE NAS 2018). He also serves as a reviewer for journals and conferences such as TIFS, TDSC, TOPS, PR, and CCBR.



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