Recently, the robotic ultrasound system has become an emerging topic owing to the widespread use of medical ultrasound. However, it is still a challenging task to model and to transfer the ultrasound skill from an ultrasound physician. In this paper, we propose a learning-based framework to acquire ultrasound scanning skills from human demonstrations. First, the ultrasound scanning skills are encapsulated into a high-dimensional multi-modal model in terms of interactions among ultrasound images, the probe pose and the contact force. The parameters of the model are learned using the data collected from skilled sonographers' demonstrations. Second, a sampling-based strategy is proposed with the learned model to adjust the extracorporeal ultrasound scanning process to guide a newbie sonographer or a robot arm. Finally, the robustness of the proposed framework is validated with the experiments on real data from sonographers.
翻译:最近,由于医学超声波的广泛使用,机器人超声波系统已成为一个新出现的专题,然而,从超声波医生那里进行模型和转让超声波技能仍是一项艰巨的任务。在本文件中,我们提议了一个学习框架,以便从人类演示中获取超声波扫描技能。首先,超声波扫描技能被包装成一个高维多模式模型,在超声波图像、探测器姿势和接触力量之间的相互作用方面,该模型的参数是利用熟练的传声员演示所收集的数据学习的。第二,与学习模型一起提出了一个基于取样的战略,以调整体外超声波扫描进程,指导新的书写家或机器人臂。最后,拟议框架的稳健性得到了声学工作者对真实数据的实验的验证。