CVApr 9, 2022

Robotic Surgery Remote Mentoring via AR with 3D Scene Streaming and Hand Interaction

arXiv:2204.04377v215 citationsh-index: 14
Originality Synthesis-oriented
AI Analysis

This work addresses the need for intuitive and interactive education in robotic surgery, offering a potential low-cost solution for clinical applications, though it appears incremental in applying existing AR technology to this domain.

The paper tackles the problem of limited access to experienced surgeons for robotic surgery training by proposing an AR-based remote mentoring system with 3D scene streaming and hand interaction, demonstrating promising results in fidelity, accuracy, and low latency in validation tests.

With the growing popularity of robotic surgery, education becomes increasingly important and urgently needed for the sake of patient safety. However, experienced surgeons have limited accessibility due to their busy clinical schedule or working in a distant city, thus can hardly provide sufficient education resources for novices. Remote mentoring, as an effective way, can help solve this problem, but traditional methods are limited to plain text, audio, or 2D video, which are not intuitive nor vivid. Augmented reality (AR), a thriving technique being widely used for various education scenarios, is promising to offer new possibilities of visual experience and interactive teaching. In this paper, we propose a novel AR-based robotic surgery remote mentoring system with efficient 3D scene visualization and natural 3D hand interaction. Using a head-mounted display (i.e., HoloLens), the mentor can remotely monitor the procedure streamed from the trainee's operation side. The mentor can also provide feedback directly with hand gestures, which is in-turn transmitted to the trainee and viewed in surgical console as guidance. We comprehensively validate the system on both real surgery stereo videos and ex-vivo scenarios of common robotic training tasks (i.e., peg-transfer and suturing). Promising results are demonstrated regarding the fidelity of streamed scene visualization, the accuracy of feedback with hand interaction, and the low-latency of each component in the entire remote mentoring system. This work showcases the feasibility of leveraging AR technology for reliable, flexible and low-cost solutions to robotic surgical education, and holds great potential for clinical applications.

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