A3D: Adaptive, Accurate, and Autonomous Navigation for Edge-Assisted Drones
Liekang Zeng, Haowei Chen, Daipeng Feng, Xiaoxi Zhang, Xu Chen

TL;DR
A3D is an adaptive drone navigation framework that optimizes offloading, image transmission, and resource allocation to improve latency, accuracy, and flight distance using edge computing and deep reinforcement learning.
Contribution
It introduces a novel adaptive framework combining deep reinforcement learning and resource management for edge-assisted drone navigation, optimizing multiple parameters dynamically.
Findings
Reduces end-to-end latency by 28.06%.
Extends flight distance by up to 27.28%.
Demonstrates effectiveness in real-world and simulated environments.
Abstract
Accurate navigation is of paramount importance to ensure flight safety and efficiency for autonomous drones. Recent research starts to use Deep Neural Networks to enhance drone navigation given their remarkable predictive capability for visual perception. However, existing solutions either run DNN inference tasks on drones in situ, impeded by the limited onboard resource, or offload the computation to external servers which may incur large network latency. Few works consider jointly optimizing the offloading decisions along with image transmission configurations and adapting them on the fly. In this paper, we propose A3D, an edge server assisted drone navigation framework that can dynamically adjust task execution location, input resolution, and image compression ratio in order to achieve low inference latency, high prediction accuracy, and long flight distances. Specifically, we first…
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Taxonomy
TopicsAdvanced Neural Network Applications · UAV Applications and Optimization · Video Surveillance and Tracking Methods
