Learning Visual Engagement for Trauma Recovery

Svati Dhamija, T. Boult
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引用次数: 0

Abstract

Applications ranging from human emotion understanding to e-health are exploring methods to effectively understand user behavior from self-reported questionnaires. However, little is understood about non-invasive techniques that involve face-based deep-learning models to predict engagement. Current research in visual engagement poses two key questions: 1) how much time do we need to analyze facial behavior for accurate engagement prediction? and 2) which deep learning approach provides the most accurate predictions? In this paper we compare RNN, GRU and LSTM using different length segments of AUs. Our experiments show no significant difference in prediction accuracy when using anywhere between 15 and 90 seconds of data. Moreover, the results reveal that simpler models of recurrent networks are statistically significantly better suited for capturing engagement from AUs.
学习视觉参与创伤恢复
从人类情感理解到电子健康的应用都在探索从自我报告的问卷中有效理解用户行为的方法。然而,对于涉及基于面部的深度学习模型来预测参与的非侵入性技术,人们知之甚少。目前关于视觉参与的研究提出了两个关键问题:1)我们需要多少时间来分析面部行为以准确预测参与?2)哪种深度学习方法能提供最准确的预测?在本文中,我们比较了RNN, GRU和LSTM使用不同长度的au段。我们的实验表明,当使用15到90秒的数据时,预测精度没有显着差异。此外,结果表明,简单的循环网络模型在统计上明显更适合于从au获取参与度。
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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