Radiation search operations using scene understanding with autonomous UAV and UGV

Abstract

Autonomously searching for hazardous radiation sources requires the ability of the aerial and ground systems to understand the scene they are scouting. In this paper, we present systems, algorithms, and experiments to perform radiation search using unmanned aerial vehicles (UAV) and unmanned ground vehicles (UGV) by employing semantic scene segmentation. The aerial data are used to identify radiological points of interest, generate an orthophoto along with a digital elevation model (DEM) of the scene, and perform semantic segmentation to assign a category (e.g., road, grass) to each pixel in the orthophoto. We perform semantic segmentation by training a model on a dataset of images we collected and annotated, using the model to perform inference on images of the test area unseen to the model, and then refining the results with the DEM to better reason about category predictions at each pixel. We then use all of these outputs to plan a path for a UGV carrying a LiDAR to map the environment and avoid obstacles not present during the flight, and a radiation detector to collect more precise radiation measurements from the ground. Results of the analysis for each scenario tested favorably. We also note that our approach is general and has the potential to work for a variety of different sensing tasks.

Document Details

Document Type
Pub Defense Publication
Publication Date
May 29, 2017
Source ID
10.1002/rob.21723

Entities

People

  • Adam Shoemaker
  • Alexander Leonessa
  • Gordon Christie
  • Kevin Kochersberger
  • Lance Mclean
  • Pratap Tokekar

Organizations

  • Defense Threat Reduction Agency
  • Johns Hopkins University
  • Virginia Tech

Tags

Readers

  • Aerial Unmanned Vehicle Swarm Micro Periodontal Dentistry.
  • Computer Vision.
  • Nuclear and Radiation Engineering.

Technology Areas

  • AI & ML
  • AI & ML - Autonomous Systems
  • Autonomy