An Autonomous Drone for Search and Rescue in Forests using Airborne
Optical Sectioning
- URL: http://arxiv.org/abs/2105.04328v1
- Date: Mon, 10 May 2021 13:05:22 GMT
- Title: An Autonomous Drone for Search and Rescue in Forests using Airborne
Optical Sectioning
- Authors: D.C. Schedl, I. Kurmi, and O. Bimber
- Abstract summary: We present a first prototype that finds people fully autonomously in densely occluded forests.
In the course of 17 field experiments conducted over various forest types, our drone found 38 out of 42 hidden persons.
Deep-learning-based person classification is unaffected by sparse and error-prone sampling within one-dimensional synthetic apertures.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Drones will play an essential role in human-machine teaming in future search
and rescue (SAR) missions. We present a first prototype that finds people fully
autonomously in densely occluded forests. In the course of 17 field experiments
conducted over various forest types and under different flying conditions, our
drone found 38 out of 42 hidden persons; average precision was 86% for
predefined flight paths, while adaptive path planning (where potential findings
are double-checked) increased confidence by 15%. Image processing,
classification, and dynamic flight-path adaptation are computed onboard in
real-time and while flying. Our finding that deep-learning-based person
classification is unaffected by sparse and error-prone sampling within
one-dimensional synthetic apertures allows flights to be shortened and reduces
recording requirements to one-tenth of the number of images needed for sampling
using two-dimensional synthetic apertures. The goal of our adaptive path
planning is to find people as reliably and quickly as possible, which is
essential in time-critical applications, such as SAR. Our drone enables SAR
operations in remote areas without stable network coverage, as it transmits to
the rescue team only classification results that indicate detections and can
thus operate with intermittent minimal-bandwidth connections (e.g., by
satellite). Once received, these results can be visually enhanced for
interpretation on remote mobile devices.
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