Image Search Strategy via Visual Servoing for Robotic Kidney Ultrasound Imaging

Pub Date : 2023-10-20 DOI:10.20965/jrm.2023.p1281
Takumi Fujibayashi, Norihiro Koizumi, Yu Nishiyama, Jiayi Zhou, Hiroyuki Tsukihara, Kiyoshi Yoshinaka, Ryosuke Tsumura
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Abstract

Ultrasound (US) imaging is beneficial for kidney diagnosis; however, it involves sophisticated tasks that must be performed by physicians to obtain the target image. We propose a target-image search strategy combining visual servoing and deep learning-based image evaluation for robotic kidney US imaging. The search strategy is designed by mimicking physicians’ motion axis of the US probe. By controlling the position of the US probe along each of the motion axes while evaluating the obtained US images based on an anatomical feature extraction method via instance segmentation with YOLACT++, we are able to search for an optimal target image. The proposed approach was validated through phantom studies. The results showed that the proposed approach could find the target kidney images with error rates of 2.88±1.76 mm and 2.75±3.36°. Thus, the proposed method enables the accurate identification of the target image, which highlights its potential for application in autonomous kidney US imaging.
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基于视觉伺服的机器人肾脏超声成像图像搜索策略
超声(US)成像有利于肾脏诊断;然而,它涉及复杂的任务,必须由医生执行以获得目标图像。我们提出了一种结合视觉伺服和基于深度学习的图像评估的目标图像搜索策略,用于机器人肾脏超声成像。搜索策略是通过模仿医生的美国探针运动轴来设计的。通过控制US探针沿每个运动轴的位置,同时基于解剖特征提取方法对获得的US图像进行评估,并通过yolact++进行实例分割,我们能够搜索到最优的目标图像。提出的方法通过模拟研究得到验证。结果表明,该方法能够准确定位目标肾脏图像,误差率分别为2.88±1.76 mm和2.75±3.36°。因此,所提出的方法能够准确地识别目标图像,这突出了其在自主肾超声成像中的应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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