一个评估敬礼视频的框架

Hiteshi Jain, Gaurav Harit
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引用次数: 7

摘要

有许多练习本质上是重复的,需要完美地完成才能获得最大的好处。拜日式是已知的最古老的瑜伽练习之一。它是由十个动作或体式组成的序列,动作与呼吸同步,每个动作及其过渡都应该以最小的抽搐来完成。从本质上讲,重要的是瑜伽练习要优雅和一致。在这种情况下,优雅是指一个人在姿势转换过程中平稳地进行锻炼的能力,即没有突然的动作或抽搐,而一致性是指在每个周期中锻炼的可重复性。我们提出了一种算法来评估一个人在优雅和一致性方面练习太阳敬礼的程度。我们的方法是通过使用STIP特征[11]为每个体式训练单个hmm,然后使用连接的hmm对整个日式序列进行自动分割和标记。优雅和一致性的度量是根据姿势转换的时间来确定的。将系统的评估结果与瑜伽教练的评估结果进行比较,得出系统的准确性。我们引入了一个由7位专家表演的30个完美的敬礼视频组成的数据集,并使用该数据集来训练我们的系统。虽然Sun Salutation可以从多个参数来判断,但我们主要关注的是判断Grace和Consistency。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A framework to assess Sun salutation videos
There are many exercises which are repetitive in nature and are required to be done with perfection to derive maximum benefits. Sun Salutation or Surya Namaskar is one of the oldest yoga practice known. It is a sequence of ten actions or 'asanas' where the actions are synchronized with breathing and each action and its transition should be performed with minimal jerks. Essentially, it is important that this yoga practice be performed with Grace and Consistency. In this context, Grace is the ability of a person to perform an exercise with smoothness i.e. without sudden movements or jerks during the posture transition and Consistency measures the repeatability of an exercise in every cycle. We propose an algorithm that assesses how well a person practices Sun Salutation in terms of grace and consistency. Our approach works by training individual HMMs for each asana using STIP features[11] followed by automatic segmentation and labeling of the entire Sun Salutation sequence using a concatenated-HMM. The metric of grace and consistency are then laid down in terms of posture transition times. The assessments made by our system are compared with the assessments of the yoga trainer to derive the accuracy of the system. We introduce a dataset for Sun Salutation videos comprising 30 sequences of perfect Sun Salutation performed by seven experts and used this dataset to train our system. While Sun Salutation can be judged on multiple parameters, we focus mainly on judging Grace and Consistency.
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