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Ambiance Signal Processing: A Study on Collaborative Affective Computing

机译:氛围信号处理:协同情感计算研究

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摘要

Computational feature recognition is an essential component for intelligent systems to sense the objects and environments. This paper proposes a novel conceptual model, named Ambiance Signal Processing (AmSiP), to identify objects' features when they are not directly accessible by sensors. AmSiP analyzes the surrounding and ambiance of objects/subjects collaboratively to recognize the object's features instead of concentrating on each individual and accessible object. To validate the proposed model, this study runs an experiment with 50 participants, whose emotional state variations are estimated by measuring the surroundings features and the emotions of other people in the same environment. The results of a t-Test on the data collected from this experiment showed that users' emotions were being changed in a course of time during the experiment; however, AmSiP could estimate subjects' emotions reliably according to the environmental characteristics and similar patterns. To evaluate the reliability and efficiency of this model, a collaborative affective computing system was implemented using keyboard keystroke dynamics and mouse interactions of the users whose emotions were affected by different types of music. In comparison with other conventional techniques (explicit access), the prediction was reliable. Although the developed model sacrifices a minor accuracy, it earns the superiority of uncovering blind knowledge about the subjects out of the sensors' direct access.
机译:计算特征识别是智能系统感知物体和环境的重要组成部分。本文提出了一种新颖的概念模型,称为环境信号处理(AmSiP),用于在传感器无法直接访问它们时识别它们的特征。 AmSiP协同分析对象/对象的周围环境和氛围,以识别对象的特征,而不是专注于每个单独的可访问对象。为了验证所提出的模型,本研究进行了一个有50名参与者的实验,这些参与者的情绪状态变化是通过测量周围环境特征和同一环境中其他人的情绪来估算的。根据从该实验收集到的数据进行的t检验的结果表明,在实验过程中,用户的情绪会随着时间的推移而发生变化;但是,AmSiP可以根据环境特征和类似模式可靠地估计对象的情绪。为了评估该模型的可靠性和效率,使用了情感受到不同类型音乐影响的用户的键盘按键动力学和鼠标交互功能,实现了一种协作式情感计算系统。与其他常规技术(显式访问)相比,该预测是可靠的。尽管开发的模型牺牲了较小的准确性,但它具有从传感器的直接访问中发现有关对象的盲目知识的优势。

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