 Sub6-Preds-mmWave
 Sub6-Preds-mmWave 
 Beam predictor
 Predicts mmWave beam-forming vectors using sub-6 GHz channels and deep learning.
Using sub-6 GHz channels to predict mmWave beams and link blockage.
36 stars
 3 watching
 19 forks
 
Language: MATLAB 
last commit: almost 4 years ago 
Linked from   1 awesome list  
  5gchannel-mappingdeep-learningmatlabmmwave 
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