The following publications are possibly variants of this publication:
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- Precoder and Detector Learning for Vision-based mmWave Received Power PredictionJia Guo, Mehdi Bennis, Chenyang Yang 0001. pimrc 2023: 1-6 [doi]
- Transfer Learning-Based Received Power Prediction Using RGB-D Camera in mmWave NetworksTomoya Mikuma, Takayuki Nishio, Masahiro Morikura, Koji Yamamoto, Yusuke Asai, Ryo Miyatake. vtc 2019: 1-5 [doi]
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