immortal3/AutoEncoder-Based-Communication-System
Tensorflow Implementation and result of Auto-encoder Based Communication System From Research Paper : "An Introduction to Deep Learning for the Physical Layer" http://ieeexplore.ieee.org/document/8054694/
This project helps wireless communication engineers design and analyze communication systems by implementing an autoencoder-based approach. It takes communication system parameters as input and outputs optimized transmitter and receiver designs, along with their bit error rate (BER) performance. It's for researchers and students working on advanced wireless communication system design.
135 stars. No commits in the last 6 months.
Use this if you are a telecommunications researcher or student exploring deep learning techniques to optimize physical layer communication systems.
Not ideal if you need an out-of-the-box, production-ready solution for an existing communication system.
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Jul 14, 2020
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