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A multi-modal scanning system to digitize CBRNE emergency response scenes

Publication Type
Conference Paper
Book Title
2022 IEEE International Symposium on Safety, Security, and Rescue Robotics (SSRR)
Publication Date
Page Numbers
74 to 79
Publisher Location
New Jersey, United States of America
Conference Name
IEEE International Symposium on Safety, Security, and Rescue Robotics (SSRR)
Conference Location
Seville, Spain
Conference Sponsor
IEEE Robotics and Automation Society
Conference Date
-

A handheld system developed to digitize a contextual understanding of the scene at a chemical, biological, radiological, nuclear and/or explosives (CBRNE) events is described. The system uses LiDAR and cameras to create a colorized 3D model of the environment, which helps domain experts that are supporting responders in the field. To generate the digitized model, a responder scans any suspicious objects and the surroundings by carrying the system through the scene. The scanning system provides a real-time user interface to inform the user about scanning progress and to indicate any areas that may have been missed either by the LiDAR sensors or the cameras. Currently, the collected data are post-processed on a different device, building a colorized triangular mesh of the encountered scene, with the intention of moving this pipeline to the scanner at a later point. The mesh is sufficiently compressed to be sent over a reduced bandwidth connection to a remote analyst. Furthermore, the system tracks fiducial markers attached to diagnostic equipment that is placed around the suspicious object. The resulting tracking information can be transmitted to remote analysts to further facilitate their supporting efforts. The paper will discuss the system's design, software components, the user interface used for scanning a scene, the necessary procedures for calibration of the sensors, and the processing steps of the resulting data. The discussion will close by evaluating the system's performance on 11 scenes.