An Unsupervised Sequence-to-Sequence Autoencoder Based Human Action Scoring Model

Hiteshi Jain, Gaurav Harit
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引用次数: 5

Abstract

Developing a model for the task of assessing quality of human action is a key research area in computer vision. The quality assessment task has been posed as a supervised regression problem, where models have been trained to predict score, given action representation features. However, human proficiency levels can widely vary and so do their scores. Providing all such performance variations and their respective scores is an expensive solution as it requires a domain expert to annotate many videos. The question arises - Can we exploit the variations of the performances from that of expert and map the variations to their respective scores? To this end, we introduce a novel sequence-to-sequence autoencoder-based scoring model which learns the representation from only expert performances and judges an unknown performance based on how well it can be regenerated from the learned model. We evaluated our model in predicting scores of a complex Sun- Salutation action sequence, and demonstrate that our model gives remarkable prediction accuracy compared to the baselines.
基于无监督序列到序列自编码器的人类动作评分模型
建立一个评估人类行为质量的模型是计算机视觉的一个重要研究领域。质量评估任务已被提出作为一个监督回归问题,其中模型已被训练以预测分数,给定动作表示特征。然而,人类的熟练程度差异很大,他们的分数也是如此。提供所有这些性能变化及其各自的分数是一个昂贵的解决方案,因为它需要一个领域专家来注释许多视频。问题来了——我们能否利用专家表现的变化,并将这些变化映射到他们各自的分数上?为此,我们引入了一种新的基于序列到序列自编码器的评分模型,该模型仅从专家表演中学习表征,并根据从学习模型中再生的程度来判断未知表演。我们评估了我们的模型在预测一个复杂的太阳敬礼动作序列的分数,并证明我们的模型与基线相比具有显着的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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