mingyuyng/OFDM-guided-JSCC
Code for paper 'OFDM-guided Deep Joint Source Channel Coding for Wireless Multipath Fading Channels', IEEE TCCN
This project helps wireless communication engineers send images over wireless channels more reliably. It takes raw image data and simulates its transmission through various wireless environments, producing metrics on how well the image was reconstructed at the receiving end. Engineers working on designing or evaluating wireless image transmission systems would use this to compare different encoding and decoding strategies.
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Use this if you need to evaluate deep learning-based joint source-channel coding techniques for transmitting images over wireless channels with multipath fading.
Not ideal if you are looking for a general-purpose image compression tool or a solution for wired communication systems.
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Python
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Last pushed
Sep 14, 2021
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