通过缓冲界面实现情感社交信号的触觉手势设计

Eleuda Nuñez, Masakazu Hirokawa, Kenji Suzuki
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引用次数: 2

摘要

在以计算机为媒介的交流中,机器能够支持的非语言提示或社交信号的数量仍然有限。通过将触觉信息整合到计算系统中,有可能为人们在中介沟通中传递社会信号的方式提供一个新的维度。本研究旨在区分不同的触觉手势使用一个物理界面与一个类似垫子的形式设计为远程通信场景的中介。所提出的界面可以通过坐垫的变形数据与运动数据相结合来感知用户。本文的贡献如下:1)无论每个参与者对手势的特定解释如何,所提出的解决方案都可以检测出8种触觉手势,准确率超过80%;2)手势的分类无需校准,与坐垫的方向无关。这些结果代表着向支持触觉手势分类的情感通信系统的发展迈出了一步。
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Design of Haptic Gestures for Affective Social Signaling Through a Cushion Interface
In computer-mediated communication, the amount of non-verbal cues or social signals that machines can support is still limited. By integrating haptic information into computational systems, it might be possible to give a new dimension to the way people convey social signals in mediated communication. This research aims to distinguish different haptic gestures using a physical interface with a cushion-like form designed as a mediator for remote communication scenarios. The proposed interface can sense the user through the cushion’s deformation data combined with motion data. The contribution of this paper is the following: 1) Regardless of each participant’s particular interpretation of the gesture, the proposed solution can detect eight haptic gestures with more than 80% of accuracy across participants, and 2) The classification of gestures was done without the need of calibration, and independent of the orientation of the cushion. These results represent one step toward the development of affect communication systems that can support haptic gesture classification.
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