NaviSplit: Dynamic Multi-Branch Split DNNs for Efficient Distributed Autonomous Navigation
Timothy K Johnsen, Ian Harshbarger, Zixia Xia, Marco Levorato

TL;DR
NaviSplit introduces a dynamic multi-branch split neural network framework for UAV autonomous navigation, reducing data transmission and maintaining high accuracy under resource constraints.
Contribution
It presents the first dynamic multi-branched split DNN framework with a neural gate for efficient UAV navigation, balancing accuracy and data usage.
Findings
Achieves 72-81% depth map extraction accuracy.
Transmits only 1.2-18 KB of data to the edge server.
Reduces data rate by 95% with a slight accuracy gain.
Abstract
Lightweight autonomous unmanned aerial vehicles (UAV) are emerging as a central component of a broad range of applications. However, autonomous navigation necessitates the implementation of perception algorithms, often deep neural networks (DNN), that process the input of sensor observations, such as that from cameras and LiDARs, for control logic. The complexity of such algorithms clashes with the severe constraints of these devices in terms of computing power, energy, memory, and execution time. In this paper, we propose NaviSplit, the first instance of a lightweight navigation framework embedding a distributed and dynamic multi-branched neural model. At its core is a DNN split at a compression point, resulting in two model parts: (1) the head model, that is executed at the vehicle, which partially processes and compacts perception from sensors; and (2) the tail model, that is…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
