基于试探性目标呈现的运动学习

S. Sun, Yongqing Sun, Mitsuhiro Goto, Shigekuni Kondo, Dan Mikami, Susumu Yamamoto
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引用次数: 0

摘要

本文提出了一种基于个性化目标运动呈现的运动学习方法,我们称之为暂定目标。虽然之前的许多研究都侧重于帮助用户纠正他们的运动技能动作,但大多数研究都是为用户提供参考动作,而不管该动作是否可以实现。这使得当用户的运动与参考运动之间的差异太大时,用户很难适当地将他们的运动修改为参考运动。本研究旨在提供一个试探性的目标,即在一定的运动变化量内最大限度地提高性能。为了实现这一点,预测任何动作的性能是必要的。然而,由于人体运动的多样性,通过建立一个通用模型来估计一个暂定目标的性能是具有挑战性的。因此,我们建立了一个单独的模型,从一个小的训练数据集预测性能,并使用我们提出的数据增强方法实现它。篮球罚球数据实验证明了该方法的有效性。
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Motor Learning based on Presentation of a Tentative Goal
This paper presents a motor learning method based on the presenting of a personalized target motion, which we call a tentative goal. While many prior studies have focused on helping users correct their motor skill motions, most of them present the reference motion to users regardless of whether the motion is attainable or not. This makes it difficult for users to appropriately modify their motion to the reference motion when the difference between their motion and the reference motion is too significant. This study aims to provide a tentative goal that maximizes performance within a certain amount of motion change. To achieve this, predicting the performance of any motion is necessary. However, it is challenging to estimate the performance of a tentative goal by building a general model because of the large variety of human motion. Therefore, we built an individual model that predicts performance from a small training dataset and implemented it using our proposed data augmentation method. Experiments with basketball free-throw data demonstrate the effectiveness of the proposed method.
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