TL;DR
This paper presents a deep learning approach using conditional GANs to accurately detect robotic surgical tools in real-time, aiming to mitigate latency effects and enhance safety in telesurgery.
Contribution
The study introduces a purely optical, neural network-based method for real-time tool detection in robotic surgery, improving safety by reducing latency-related risks.
Findings
Achieved near-perfect label generation in 299 ms
Demonstrated the potential for real-time tool monitoring
Validated the approach on surgical data from the EndoVis challenge
Abstract
The introduction of surgical robots brought about advancements in surgical procedures. The applications of remote telesurgery range from building medical clinics in underprivileged areas, to placing robots abroad in military hot-spots where accessibility and diversity of medical experience may be limited. Poor wireless connectivity may result in a prolonged delay, referred to as latency, between a surgeon's input and action a robot takes. In surgery, any micro-delay can injure a patient severely and in some cases, result in fatality. One was to increase safety is to mitigate the effects of latency using deep learning aided computer vision. While the current surgical robots use calibrated sensors to measure the position of the arms and tools, in this work we present a purely optical approach that provides a measurement of the tool position in relation to the patient's tissues. This…
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