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Beam Prediction

The beam prediction task involves determining the optimal beam or set of beams to use for signal transmission between a base station and a user device. Beam prediction is crucial in millimeter-wave (mmWave) and massive MIMO systems, where highly directional beams are used to overcome signal attenuation and ensure high data rates. The goal is to predict the most suitable beam(s) based on environmental factors, user location, and historical signal data, without exhaustive search over all possible beams, which can be computationally intensive.

Papers

Showing 3140 of 52 papers

TitleStatusHype
ViT LoS V2X: Vision Transformers for Environment-aware LoS Blockage Prediction for 6G Vehicular Networks0
Adversarial Attacks on Deep Learning Based mmWave Beam Prediction in 5G and Beyond0
Adversarial Machine Learning Security Problems for 6G: mmWave Beam Prediction Use-Case0
AI-Driven Mobility Management for High-Speed Railway Communications: Compressed Measurements and Proactive Handover0
A Low-Complexity Machine Learning Design for mmWave Beam Prediction0
STAR-RIS Aided Dynamic Scatterers Tracking for Integrated Sensing and Communications0
Towards Real-World 6G Drone Communication: Position and Camera Aided Beam Prediction0
Uncertainty Aware Deep Learning for Particle Accelerators0
Vehicle Cameras Guide mmWave Beams: Approach and Real-World V2V Demonstration0
Vision-Aided Beam Tracking: Explore the Proper Use of Camera Images with Deep Learning0
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