Markerless registration for image-guided endoscopic retrograde cholangiopancreatography (ERCP).

Young-Gi Jung, Myeongjin Kim, Doo Yong Lee
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Abstract

This paper proposes methods for markerless registration, which enable tracking pose of the endoscope camera in real time for implementation of the image-guided ERCP. Edge-based initialization is developed to determine the initial pose of the endoscope camera. Images of virtual endoscope are rendered from the virtual 3D organ model constructed from the patient's CT images. The similarity between edges on the image of the virtual and real endoscope is exploited for registration. An optical-flow-based tracking method is developed to track the changes starting from the initial pose of the endoscope camera in real time. The redefinition method is proposed to prevent the accumulation of the tracking error. Accuracy of the proposed methods is compared with the previous methods. The initialization method reduces 5.2 mm, 33.1 degrees, and 10.9 degrees of the position, direction, and roll angle error, on average, respectively. The tracking method reduces 3.5 degrees and 1.7 degrees of the hysteresis error in the direction angle and roll angle, respectively, with 15% faster update rate.
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图像引导下内镜逆行胆管造影(ERCP)的无标记配准。
本文提出了一种无标记配准方法,使内窥镜摄像机的姿态能够实时跟踪,实现图像引导下的ERCP。提出了基于边缘的初始化方法来确定内窥镜摄像机的初始姿态。虚拟内窥镜图像是由患者CT图像构建的虚拟三维器官模型绘制而成。利用虚拟内窥镜和真实内窥镜图像边缘之间的相似性进行配准。提出了一种基于光流的跟踪方法,实时跟踪内窥镜摄像机从初始位姿开始的变化。为了防止跟踪误差的累积,提出了重定义方法。将所提方法的精度与已有方法进行了比较。初始化方法平均使位置误差减小5.2 mm,方向误差减小33.1°,侧倾角误差减小10.9°。该跟踪方法在方向角和横摇角上的滞后误差分别减小3.5度和1.7度,更新速度提高15%。
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