Deep Learning Models for Continuous Authentication on Mobile Devices

Paperback Published on: 01/01/2027
Price: £152.99
Free UK delivery on orders over £25
Please note, this item can only be delivered to a UK address. Find out more
Coming soon
Published 01/01/2027
Make and edit your lists in your account
No stock available in any shop.
Coming soon
Published 01/01/2027
No stock available in any shop.

Synopsis

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.

Publisher information

  • Publisher: Elsevier - Health Sciences Division
  • ISBN: 9780443494154
  • Number of pages: 400
  • Dimensions: 235 x 191 mm
  • Languages: English

Customer Reviews