A3D: Adaptive, Accurate, and Autonomous Navigation for Edge-Assisted
Drones
- URL: http://arxiv.org/abs/2307.09880v1
- Date: Wed, 19 Jul 2023 10:23:28 GMT
- Title: A3D: Adaptive, Accurate, and Autonomous Navigation for Edge-Assisted
Drones
- Authors: Liekang Zeng, Haowei Chen, Daipeng Feng, Xiaoxi Zhang, Xu Chen
- Abstract summary: We propose A3D, an edge server assisted drone navigation framework.
A3D can reduce end-to-end latency by 28.06% and extend the flight distance by up to 27.28% compared with non-adaptive solutions.
- Score: 12.439787085435661
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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 augment
state-of-the-art convolutional neural networks for drone navigation and define
a novel metric called Quality of Navigation as our optimization objective which
can effectively capture the above goals. We then design a deep reinforcement
learning based neural scheduler at the drone side for which an information
encoder is devised to reshape the state features and thus improve its learning
ability. To further support simultaneous multi-drone serving, we extend the
edge server design by developing a network-aware resource allocation algorithm,
which allows provisioning containerized resources aligned with drones' demand.
We finally implement a proof-of-concept prototype with realistic devices and
validate its performance in a real-world campus scene, as well as a simulation
environment for thorough evaluation upon AirSim. Extensive experimental results
show that A3D can reduce end-to-end latency by 28.06% and extend the flight
distance by up to 27.28% compared with non-adaptive solutions.
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