A DDQN policy for UAVs using semantic latent representations from DeepJSCC outperforms greedy and traveling salesman baselines in simulated device coverage and image reconstruction quality.
Muti-agent proximal policy optimization for data freshness in UA V-assisted networks
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Semantic-Aware UAV Command and Control for Efficient IoT Data Collection
A DDQN policy for UAVs using semantic latent representations from DeepJSCC outperforms greedy and traveling salesman baselines in simulated device coverage and image reconstruction quality.