远程医疗用神经外科视频感兴趣区域的检测

Bing Liu
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引用次数: 4

摘要

在复杂图像或视频(如血管造影图像和神经外科视频)中自动检测感兴趣区域(roi)是许多医学图像和视频处理应用中的关键任务。本文提出了一种用于神经生理术中监测(IOM)系统的神经外科视频ROI编码自动检测的新方法。该方法基于多变量密度估计理论的目标跟踪技术,结合神经外科视频中目标的形状信息。通过定义神经外科视频的roi,该方法产生一个平滑和凸的重点区域,在该区域内进行外科手术。在ROI内分配了大量带宽预算来存档高保真Internet传输。在ROI之外,分配较小的带宽预算,以有效地利用Internet连接中的带宽资源。经过改进,我们相信该方法也可以应用于图像引导手术(IGS)系统,在患者所占用的物理空间中跟踪手术器械的位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of region of interest in neurosurgical video used for telemedicine
Automatic detection of region of interest (ROIs) in a complex image or video, such as angiogram pictures and neurosurgery video, is a critical task in many medical image and video processing applications. In this paper, we present a new method that addresses several challenges in automatic detection of ROI of neurosurgical video for ROI coding which is used for neurophysiological intraoperative monitoring (IOM) system. This method is based on an object tracking technique with the multivariate density estimation theory, combined with the shape information of the object in the neurosurgical video. By defining the ROIs for neurosurgical video, this method produces a smooth and convex emphasis region within which surgical procedures are performed. A large bandwidth budget is assigned within the ROI to archive high-fidelity Internet transmission. Outside the ROI, a small bandwidth budget is allocated to efficiently utilize the bandwidth resource in Internet connection. And we believe this method also can be used to the image-guide surgery (IGS) system to track the positions of surgical instruments in the physical space occupied by the patient after some improvement.
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