A Mobile Robotic Approach to Autonomous Surface Scanning in Legal Medicine
Sarah Grube, Sarah Latus, Martin Fischer, Vidas Raudonis, Axel, Heinemann, Benjamin Ondruschka, Alexander Schlaefer

TL;DR
This paper presents a mobile robotic system for efficient, autonomous external surface scanning in legal medicine, achieving high coverage and accuracy, thus enhancing documentation processes compared to manual or fixed systems.
Contribution
The work introduces a novel mobile robotic approach for full-body surface scanning in legal medicine, including configuration analysis and validation in real-world scenarios.
Findings
Achieved 94.96% surface coverage with three robot positions.
Validated system accuracy with 96.90% coverage on a body phantom.
Demonstrated effective application on actual corpses.
Abstract
Purpose: Comprehensive legal medicine documentation includes both an internal but also an external examination of the corpse. Typically, this documentation is conducted manually during conventional autopsy. A systematic digital documentation would be desirable, especially for the external examination of wounds, which is becoming more relevant for legal medicine analysis. For this purpose, RGB surface scanning has been introduced. While a manual full surface scan using a handheld camera is timeconsuming and operator dependent, floor or ceiling mounted robotic systems require substantial space and a dedicated room. Hence, we consider whether a mobile robotic system can be used for external documentation. Methods: We develop a mobile robotic system that enables full-body RGB-D surface scanning. Our work includes a detailed configuration space analysis to identify the environmental…
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Taxonomy
TopicsArtificial Intelligence in Law
MethodsBalanced Selection
