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Relative Hidden Markov Models for Video-Based Evaluation of Motion Skills in Surgical Training

机译:基于隐式马尔可夫模型的手术培训中基于视频的运动技能评估

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摘要

A proper temporal model is essential to analysis tasks involving sequential data. In computer-assisted surgical training, which is the focus of this study, obtaining accurate temporal models is a key step towards automated skill-rating. Conventional learning approaches can have only limited success in this domain due to insufficient amount of data with accurate labels. We propose a novel formulation termed Relative Hidden Markov Model and develop algorithms for obtaining a solution under this formulation. The method requires only relative ranking between input pairs, which are readily available from training sessions in the target application, hence alleviating the requirement on data labeling. The proposed algorithm learns a model from the training data so that the attribute under consideration is linked to the likelihood of the input, hence supporting comparing new sequences. For evaluation, synthetic data are first used to assess the performance of the approach, and then we experiment with real videos from a widely-adopted surgical training platform. Experimental results suggest that the proposed approach provides a promising solution to video-based motion skill evaluation. To further illustrate the potential of generalizing the method to other applications of temporal analysis, we also report experiments on using our model on speech-based emotion recognition.
机译:适当的时间模型对于涉及顺序数据的分析任务至关重要。在本研究的重点是计算机辅助手术训练中,获得准确的时间模型是实现自动化技能评估的关键步骤。由于具有准确标签的数据量不足,传统的学习方法在该领域只能取得有限的成功。我们提出了一种称为相对隐马尔可夫模型的新颖公式,并开发了用于在此公式下获得解决方案的算法。该方法只需要输入对之间的相对排名,就可以从目标应用程序的培训课程中轻松获得这些排名,从而减轻了对数据标记的需求。所提出的算法从训练数据中学习模型,从而将考虑中的属性链接到输入的可能性,从而支持比较新序列。为了进行评估,首先使用合成数据评估该方法的性能,然后我们使用来自广泛采用的手术培训平台的真实视频进行实验。实验结果表明,所提出的方法为基于视频的运动技能评估提供了有希望的解决方案。为了进一步说明将该方法推广到时间分析的其他应用的潜力,我们还报告了在基于语音的情感识别上使用我们的模型的实验。

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