会议专题

Graph Based Interactive Detection of Curve Structures in 2D Fluoroscopy

An accurate and robust method to detect curve structures, such as a vessel branch or a guidewire, is essential for many medical imaging applications. A fully automatic method, although highly desired, is prone to detection errors that are caused by image noise and curve-like artifacts. In this paper, we present a novel method to interactively detect a curve structure in a 2D fluoroscopy image with a minimum requirement of human corrections. In this work, a learning based method is used to detect curve segments. Based on the detected segment candidates, a graph is built to search a curve structure as the best path passing through user interactions. Furthermore, our method introduces a novel hyper-graph based optimization method to allow for imposing geometric constraints during the path searching, and to provide a smooth and quickly converged result. With minimum human interactions involved, the method can provide accurate detection results, and has been used in different applications for guidewire and vessel detections.

Peng Wang Wei-shing Liao Terrence Chen Shaohua K.Zhou Dorin Comaniciu

Siemens Corporate Research, 755 College Road East, Princeton NJ, U.S.A.

国际会议

The 13th International Conference on Medical Image Computing and Computer-Assisted Intervention(第13届医学影像计算与计算机辅助介入国际会议 MICCAI 2010)

北京

英文

269–277

2010-09-01(万方平台首次上网日期,不代表论文的发表时间)