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Uncertainty-Aware Organ Classification for Surgical Data Science Applications in Laparoscopy
54
Zitationen
9
Autoren
2018
Jahr
Abstract
This paper significantly enhances the state of art in automatic labeling of endoscopic videos by introducing the use of the confidence metric, and by being the first study to use MI data for in vivo laparoscopic tissue classification. The data of our experiments will be released as the first in vivo MI dataset upon publication of this paper.
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