Mohammad Waquas Usmani

h-index10
1paper

1 Paper

CRDec 17, 2025
Secure AI-Driven Super-Resolution for Real-Time Mixed Reality Applications

Mohammad Waquas Usmani, Sankalpa Timilsina, Michael Zink et al.

Immersive formats such as 360° and 6DoF point cloud videos require high bandwidth and low latency, posing challenges for real-time AR/VR streaming. This work focuses on reducing bandwidth consumption and encryption/decryption delay, two key contributors to overall latency. We design a system that downsamples point cloud content at the origin server and applies partial encryption. At the client, the content is decrypted and upscaled using an ML-based super-resolution model. Our evaluation demonstrates a nearly linear reduction in bandwidth/latency, and encryption/decryption overhead with lower downsampling resolutions, while the super-resolution model effectively reconstructs the original full-resolution point clouds with minimal error and modest inference time.