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Relative Hidden Markov Models for Evaluating Motion Skill

机译:运动技能评估的相对隐马尔可夫模型

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This paper is concerned with a novel problem: learning temporal models using only relative information. Such a problem arises naturally in many applications involving motion or video data. Our focus in this paper is on video-based surgical training, in which a key task is to rate the performance of a trainee based on a video capturing his motion. Compared with the conventional method of relying on ratings from senior surgeons, an automatic approach to this problem is desirable for its potential lower cost, better objectiveness, and real-time availability. To this end, we propose a novel formulation termed {it Relative Hidden Markov Model} and develop an algorithm for obtaining a solution under this model. The proposed method utilizes only a relative ranking (based on an attribute of interest) between pairs of the inputs, which is easier to obtain and often more consistent, especially for the chosen application domain. The proposed algorithm effectively learns a model from the training data so that the attribute under consideration is linked to the likelihood of the inputs under the learned model. Hence the model can be used to compare new sequences. Synthetic data is first used to systematically evaluate the model and the algorithm, and then we experiment with real data from a surgical training system. The experimental results suggest that the proposed approach provides a promising solution to the real-world problem of motion skill evaluation from video.
机译:本文涉及一个新问题:仅使用相对信息来学习时间模型。在涉及运动或视频数据的许多应用中自然会出现这样的问题。我们在本文中的重点是基于视频的外科培训,其中一项关键任务是根据捕获其运动的视频对受训者的表现进行评估。与依靠高级外科医师的评级的常规方法相比,由于其潜在的较低成本,更好的客观性和实时可用性,因此需要一种自动解决此问题的方法。为此,我们提出了一种新的公式,称为{it Relative Hidden Markov Model},并开发了一种在该模型下获得解的算法。所提出的方法仅利用成对的输入之间的相对排名(基于感兴趣的属性),这相对容易获得并且通常更一致,尤其是对于所选的应用领域。所提出的算法从训练数据中有效地学习了一个模型,从而使所考虑的属性与学习到的模型下的输入的可能性相关联。因此,该模型可用于比较新序列。首先使用合成数据来系统地评估模型和算法,然后使用来自外科培训系统的真实数据进行实验。实验结果表明,所提出的方法为解决视频中的运动技能评估的实际问题提供了有希望的解决方案。

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