情感笔:基于笔迹特征的情感语境识别

Jiawen Han, G. Chernyshov, D. Zheng, Peizhong Gao, Takuji Narumi, Katrin Wolf, K. Kunze
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引用次数: 6

摘要

本文讨论了隐式人机交互中数字化手写用户情感状态的评估。所提出的概念举例说明了数字系统如何识别交互的情感背景。我们讨论我们的方法情绪识别和潜在的神经生理机制。为了验证我们方法的可行性,我们进行了一系列测试,要求参与者在观看了EMDB的一系列情绪刺激视频片段后执行简单的写作任务[6],在情绪的圆周模型[28]中,每个象限一组四个片段。使用记录数据构建的独立于用户的支持向量分类器(SVC)显示,对于某些类型的写作任务,对于1 / 4的分类(1 / 4),准确率高达66%。高效价,高唤醒;2. 高效价,低唤醒;3.低效价,高唤醒;4. 低效价,低唤醒)。在相同的条件下,用户依赖分类器在所有12个研究参与者中平均达到70%的准确率。虽然未来的工作需要提高分类率,但这项工作应被视为手写时用户情绪评估的概念验证,旨在激励书写时隐式交互的研究,以实现移动和无处不在的计算中的情绪敏感性。
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Sentiment Pen: Recognizing Emotional Context Based on Handwriting Features
In this paper, we discuss the assessment of the emotional state of the user from digitized handwriting for implicit human-computer interaction. The proposed concept exemplifies how a digital system could recognize the emotional context of the interaction. We discuss our approach to emotion recognition and the underlying neurophysiological mechanisms. To verify the viability of our approach, we have conducted a series of tests where participants were asked to perform simple writing tasks after being exposed to a series of emotionally-stimulating video clips from EMDB[6], one set of four clips per each quadrant on the circumplex model of emotion[28]. The user-independent Support Vector Classifier (SVC) built using the recorded data shows up to 66% accuracy for certain types of writing tasks for 1 in 4 classification (1. High Valence, High Arousal; 2. High Valence, Low Arousal; 3. Low Valence, High Arousal; 4. Low Valence, Low Arousal). In the same conditions, a user-dependent classifier reaches an average of 70% accuracy across all 12 study participants. While future work is required to improve the classification rate, this work should be seen as proof-of-concept for emotion assessment of users while handwriting aiming to motivate research on implicit interaction while writing to enable emotion-sensitivity in mobile and ubiquitous computing.
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