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SU‐F‐BRB‐05: Collision Avoidance Mapping Using Consumer 3D Camera
Author(s) -
Cardan R,
Popple R
Publication year - 2015
Publication title -
medical physics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.473
H-Index - 180
eISSN - 2473-4209
pISSN - 0094-2405
DOI - 10.1118/1.4925200
Subject(s) - imaging phantom , computer science , polygon (computer graphics) , computer vision , collision avoidance , collision , artificial intelligence , computation , software , collision detection , computer graphics (images) , simulation , algorithm , optics , physics , telecommunications , computer security , frame (networking) , programming language
Purpose: To develop a fast and economical method of scanning a patient's full body contour for use in collision avoidance mapping without the use of ionizing radiation. Methods: Two consumer level 3D cameras used in electronic gaming were placed in a CT simulator room to scan a phantom patient set up in a high collision probability position. A registration pattern and computer vision algorithms were used to transform the scan into the appropriate coordinate systems. The cameras were then used to scan the surface of a gantry in the treatment vault. Each scan was converted into a polygon mesh for collision testing in a general purpose polygon interference algorithm. All clinically relevant transforms were applied to the gantry and patient support to create a map of all possible collisions. The map was then tested for accuracy by physically testing the collisions with the phantom in the vault. Results: The scanning fidelity of both the gantry and patient was sufficient to produce a collision prediction accuracy of 97.1% with 64620 geometry states tested in 11.5 s. The total scanning time including computation, transformation, and generation was 22.3 seconds. Conclusion: Our results demonstrate an economical system to generate collision avoidance maps. Future work includes testing the speed of the framework in real‐time collision avoidance scenarios. Research partially supported by a grant from Varian Medical Systems