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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Gesture Recognition in Robotic Surgery: A Review
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Gesture Recognition in Robotic Surgery: A Review

机译:机器人外科手势识别:综述

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摘要

Objective: Surgical activity recognition is a fundamental step in computer-assisted interventions. This paper reviews the state-of-the-art in methods for automatic recognition of fine-grained gestures in robotic surgery focusing on recent data-driven approaches and outlines the open questions and future research directions. Methods: An article search was performed on 5 bibliographic databases with the following search terms: robotic, robot-assisted, JIGSAWS, surgery, surgical, gesture, fine-grained, surgeme, action, trajectory, segmentation, recognition, parsing. Selected articles were classified based on the level of supervision required for training and divided into different groups representing major frameworks for time series analysis and data modelling. Results: A total of 52 articles were reviewed. The research field is showing rapid expansion, with the majority of articles published in the last 4 years. Deep-learning-based temporal models with discriminative feature extraction and multi-modal data integration have demonstrated promising results on small surgical datasets. Currently, unsupervised methods perform significantly less well than the supervised approaches. Conclusion: The development of large and diverse open-source datasets of annotated demonstrations is essential for development and validation of robust solutions for surgical gesture recognition. While new strategies for discriminative feature extraction and knowledge transfer, or unsupervised and semi-supervised approaches, can mitigate the need for data and labels, they have not yet been demonstrated to achieve comparable performance. Important future research directions include detection and forecast of gesture-specific errors and anomalies. Significance: This paper is a comprehensive and structured analysis of surgical gesture recognition methods aiming to summarize the status of this rapidly evolving field.
机译:目的:外科活动识别是计算机辅助干预措施的基本步骤。本文审查了在机器人手术中自动识别微粒手势的方法,专注于最近的数据驱动方法,并概述了开放问题和未来的研究方向。方法:在5个书目数据库上进行文章搜索,其中包含以下搜索条件:机器人,机器人辅助,拼图,手术,外科手术,姿态,细粒度,外科,行动,轨迹,分割,识别,解析。根据培训所需的监督水平分为所选文章,并分为代表时间序列分析和数据建模的主要框架的不同组。结果:综述了52篇文章。研究领域正在迅速扩张,大多数文章在过去4年中发表。基于深度学习的歧视特征提取和多模态数据集成的时间模型表现出对小型外科数据集的有希望的结果。目前,无监督的方法比监督方法更少。结论:批发演示的大型和多样化开源数据集的开发对于外科手势识别的强大解决方案的开发和验证至关重要。虽然歧视特征提取和知识转移或无监督和半监督方法的新策略可以减轻数据和标签的需求,但他们尚未证明实现可比性的性能。重要的未来研究方向包括姿态特定误差和异常的检测和预测。意义:本文是对外科手术识别方法的全面和结构化分析,旨在总结这种快速发展的领域的地位。

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