Learning Gait Emotions Using Affective and Deep Features

Tanmay Randhavane, Uttaran Bhattacharya, Pooja Kabra, Kyra Kapsaskis, Kurt Gray, Dinesh Manocha, Aniket Bera
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引用次数: 4

Abstract

We present a novel data-driven algorithm to learn the perceived emotions of individuals based on their walking motion or gaits. Given an RGB video of an individual walking, we extract their walking gait as a sequence of 3D poses. Our goal is to exploit the gait features to learn and model the emotional state of the individual into one of four categorical emotions: happy, sad, angry, or neutral. Our perceived emotion identification approach uses deep features learned using long short-term memory networks (LSTMs) on datasets with labeled emotive gaits. We combine these features with gait-based affective features consisting of posture and movement measures. Our algorithm identifies both the categorical emotions from the gaits and the corresponding values for the dimensional emotion components - valence and arousal. We also introduce and benchmark a dataset called Emotion Walk (EWalk), consisting of videos of gaits of individuals annotated with emotions. We show that our algorithm mapping the combined feature space to the perceived emotional state provides an accuracy of 80.07% on the EWalk dataset, outperforming the current baselines by an absolute 13–24%.
使用情感和深层特征学习步态情绪
我们提出了一种新的数据驱动算法来学习基于他们的步行运动或步态的个人感知情绪。给定一个人走路的RGB视频,我们提取他们的步行步态作为一个3D姿势序列。我们的目标是利用步态特征来学习和模拟个人的情绪状态,将其分为四种绝对情绪:快乐、悲伤、愤怒或中性。我们的感知情绪识别方法使用长短期记忆网络(LSTMs)在标记情绪步态的数据集上学习的深度特征。我们将这些特征与基于步态的情感特征结合起来,包括姿势和运动措施。我们的算法既可以从步态中识别出分类情绪,也可以从维度情绪成分中识别出相应的值——效价和唤醒。我们还介绍了一个名为情绪行走(EWalk)的数据集并对其进行了基准测试,该数据集由带有情绪注释的个人步态视频组成。我们表明,我们的算法将组合特征空间映射到感知的情绪状态,在EWalk数据集上提供了80.07%的准确率,比当前基线高出13-24%。
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