4 matches found
Secure MmWave Beamforming with Proactive-ISAC Defense against Beam-Stealing Attacks
Millimeter-wave mmWave communication systems face increasing susceptibility to advanced beam-stealing attacks, posing a significant physical layer security threat. This paper introduces a novel framework employing an advanced Deep Reinforcement Learning DRL agent for proactive and adaptive defens...
TSCL:Multi-Party Loss Balancing Scheme for Deep Learning Image Steganography Based on Curriculum Learning
For deep learning-based image steganography frameworks, in order to ensure the invisibility and recoverability of the information embedding, the loss function usually contains several losses such as embedding loss, recovery loss and steganalysis loss. In previous research works, fixed loss weight...
STCL: Curriculum Learning Strategies for Deep Learning Image Steganography Models
Whitepaper called STCL: Curriculum Learning Strategies For Deep Learning Image Steganography Models...
CLPSTNet: a Progressive Multi-Scale Convolutional Steganography Model Integrating Curriculum Learning
In recent years, a large number of works have introduced Convolutional Neural Networks CNNs into image steganography, which transform traditional steganography methods such as hand-crafted features and prior knowledge design into steganography methods that neural networks autonomically learn...