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A novel enhanced hybrid recursive algorithm: Image processing based augmented reality for gallbladder and uterus visualisation

机译:一种新型增强型混合递归算法:基于图像处理的胆囊和子宫可视化的增强现实

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Background:Current Augmented Reality systems in liver and bowel surgeries, are not accurate enough to classify the hidden parts such as gallbladder and uterus which are behind the liver and bowel. Therefore, we aimed to improve the visualization accuracy of bowel and liver augmented videos to avoid the unexpected cuttings on the hidden parts.Methodology:The proposed system consists of an Enhanced hybrid recursive matching and λ-parameterization techniques to improve the visualization. In addition, Mean Shift Filter is also added to improve the matching process while image registration.Results:Results proved that, the accuracy is improved in terms of liver and bowel surgeries Visualization errors about 0.53?mm and 0.22?mm respectively. Similarly, it can produce 2 more frames/sec compared to the current system.Conclusion:The proposed system worked towards the visualization of gallbladder and uterus while liver and bowel surgeries. So, this study solved the visualization issues, which are caused by neighbouring and hidden parts.
机译:背景:肝脏和肠道手术中的当前增强现实系统,不足以对肝脏和肠后面的胆囊和子宫等隐藏部件进行分类。因此,我们旨在提高排便和肝脏增强视频的可视化精度,以避免隐藏部件上的意外扦插。方法:所提出的系统由增强的混合递归匹配和λ参数化技术组成,以改善可视化。此外,还添加了平均移位滤波器以在图像登记时改善匹配过程。结果证明,在肝脏和肠道手术方面的准确性分别改善了约0.53Ωmm和0.22Ωmm的精度。同样,与当前系统相比,它可以产生2个帧/秒。结论:所提出的系统朝向肝脏和肠道手术的胆囊和子宫的可视化。因此,这项研究解决了可视化问题,这是由邻近和隐藏部件引起的。

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