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Game-Calibrated and User-Tailored Remote Detection of Stress and Boredom in Games

机译:游戏校准和用户量身定制的游戏中压力和乏味的远程检测

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摘要

Emotion detection based on computer vision and remote extraction of user signals commonly rely on stimuli where users have a passive role with limited possibilities for interaction or emotional involvement, e.g., images and videos. Predictive models are also trained on a group level, which potentially excludes or dilutes key individualities of users. We present a non-obtrusive, multifactorial, user-tailored emotion detection method based on remotely estimated psychophysiological signals. A neural network learns the emotional profile of a user during the interaction with calibration games, a novel game-based emotion elicitation material designed to induce emotions while accounting for particularities of individuals. We evaluate our method in two experiments (n=20 and n=62) with mean classification accuracy of 61.6%, which is statistically significantly better than chance-level classification. Our approach and its evaluation present unique circumstances: our model is trained on one dataset (calibration games) and tested on another (evaluation game), while preserving the natural behavior of subjects and using remote acquisition of signals. Results of this study suggest our method is feasible and an initiative to move away from questionnaires and physical sensors into a non-obtrusive, remote-based solution for detecting emotions in a context involving more naturalistic user behavior and games.
机译:基于计算机视觉的情感检测和用户信号的远程提取通常依赖于刺激,其中用户扮演被动角色,而互动或情感参与的可能性有限,例如图像和视频。预测模型也在小组级别上进行训练,这有可能排除或稀释用户的关键个性。我们提出了一种基于远程估计的心理生理信号的非干扰性,多因素,用户量身定制的情绪检测方法。神经网络在与校准游戏的交互过程中学习用户的情感特征,校准游戏是一种新颖的基于游戏的情感启发材料,旨在诱发情感并同时考虑个人的特殊性。我们在两个实验中评估了我们的方法(<数学xmlns:mml =“ http://www.w3.org/1998/Math/MathML” id =“ mm1”溢出=“ scroll”> n = 20 n = 62 < / mrow> ),平均分类精度为61.6%,在统计学上明显优于机会级分类。我们的方法及其评估呈现出独特的情况:我们的模型在一个数据集上进行训练(校准游戏),在另一个数据集上进行测试(评估游戏),同时保留受试者的自然行为并使用远程信号采集。这项研究的结果表明,我们的方法是可行的,并且是一种从调查表和物理传感器转移到基于非干扰性,基于远程的解决方案的计划,该方案可在涉及更多自然用户行为和游戏的情况下检测情绪。

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