neelabhro/Deep-Learning-based-Wireless-Communications
Semantically optimized end to end learning solutions for Wireless Communications using Deep Learning
This project helps wireless communication engineers improve how vehicular location data is transmitted and received, especially in challenging environments. It takes raw wireless signals and processes them using deep learning to produce more accurate positional telemetry. This is ideal for professionals designing or optimizing communication systems for connected vehicles.
No commits in the last 6 months.
Use this if you are working on wireless communication systems for vehicles and need to improve the reliability and accuracy of positional data transfer.
Not ideal if your primary goal is general-purpose deep learning research outside of wireless communication specifics.
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Last pushed
Aug 01, 2023
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