Semantic Communication based on Generative AI: A New Approach to Image Compression and Edge Optimization
Journal:
arXiv
Published Date:
Feb 1, 2025
Abstract
As digital technologies advance, communication networks face challenges in
handling the vast data generated by intelligent devices. Autonomous vehicles,
smart sensors, and IoT systems necessitate new paradigms. This thesis addresses
these challenges by integrating semantic communication and generative models
for optimized image compression and edge network resource allocation. Unlike
bit-centric systems, semantic communication prioritizes transmitting meaningful
data specifically selected to convey the meaning rather than obtain a faithful
representation of the original data. The communication infrastructure can
benefit to significant improvements in bandwidth efficiency and latency
reduction. Central to this work is the design of semantic-preserving image
compression using Generative Adversarial Networks and Denoising Diffusion
Probabilistic Models. These models compress images by encoding only
semantically relevant features, allowing for high-quality reconstruction with
minimal transmission. Additionally, a Goal-Oriented edge network optimization
framework is introduced, leveraging the Information Bottleneck principle and
stochastic optimization to dynamically allocate resources and enhance
efficiency. By integrating semantic communication into edge networks, this
approach balances computational efficiency and communication effectiveness,
making it suitable for real-time applications. The thesis compares
semantic-aware models with conventional image compression techniques using
classical and semantic evaluation metrics. Results demonstrate the potential of
combining generative AI and semantic communication to create more efficient
semantic-goal-oriented communication networks that meet the demands of modern
data-driven applications.