Author_Institution :
Inf. & Commun. Headquarters, Nagoya Univ., Nagoya, Japan
Abstract :
Endoscope 3-D motion tracking, which seeks to synchronize preand intra-operative images in endoscopic interventions, is usually performed as video-volume registration that optimizes the similarity between endoscopic video and pre-operative images. The tracking performance, in turn, depends significantly on whether a similarity measure can successfully characterize the difference between video sequences and volume rendering images driven by pre-operative images. The paper proposes a discriminative structural similarity measure, which uses the degradation of structural information and takes image correlation or structure, luminance, and contrast into consideration, to boost video-volume registration. By applying the proposed similarity measure to endoscope tracking, it was demonstrated to be more accurate and robust than several available similarity measures, e.g., local normalized cross correlation, normalized mutual information, modified mean square error, or normalized sum squared difference. Based on clinical data evaluation, the tracking error was reduced significantly from at least 14.6 mm to 4.5 mm. The processing time was accelerated more than 30 frames per second using graphics processing unit.
Keywords :
biomedical optical imaging; correlation methods; endoscopes; graphics processing units; image matching; image motion analysis; image registration; image sequences; medical image processing; object tracking; optimisation; rendering (computer graphics); synchronisation; video recording; clinical data evaluation; contrast correlation; discriminative structural similarity measure application; endoscope 3D motion tracking; endoscope three-dimensional motion tracking; endoscopic interventions; endoscopic video similarity optimization; graphics processing unit; image correlation; intra-operative image synchronization; local normalized cross correlation; luminance correlation; modified mean square error; normalized mutual information; normalized sum squared difference; pre-operative image similarity optimization; preoperative image synchronization; processing time acceleration; similarity measure characterization; similarity measure dependence; structural correlation; structural information degradation; tracking error reduction; tracking performance; video sequences; video-volume registration; volume rendering images; Cameras; Computed tomography; Current measurement; Decision support systems; Endoscopes; Rendering (computer graphics); Tracking; Computer assisted endoscopy; endoscope 3-D motion tracking; endoscopy navigation; image-guided endoscopy; similarity measure; video-volume registration;