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NTIS 바로가기Biomedical engineering letters, v.13 no.2, 2023년, pp.141 - 151
Somers, Peter (Institute for System Dynamics, University of Stuttgart, Stuttgart, Germany) , Holdenried-Krafft, Simon (Institute for Computer Graphics, University of Tü) , Zahn, Johannes (bingen, Tü) , Schüle, Johannes (bingen, Germany) , Veil, Carina (Institute for Computer Graphics, University of Tü) , Harland, Niklas (bingen, Tü) , Walz, Simon (bingen, Germany) , Stenzl, Arnulf (Institute for System Dynamics, University of Stuttgart, Stuttgart, Germany) , Sawodny, Oliver (Institute for System Dynamics, University of Stuttgart, Stuttgart, Germany) , Tarín, Cristina (Urology Clinic, University Hospital of Tü) , Lensch, Hendrik P. A. (bingen, Tü)
Monocular depth estimation from camera images is very important for surrounding scene evaluation in many technical fields from automotive to medicine. However, traditional triangulation methods using stereo cameras or multiple views with the assumption of a rigid environment are not applicable for e...
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