基于随机森林和显著特征集增强的社交触摸手势识别

Y. F. A. Gaus, Temitayo A. Olugbade, Asim Jan, R. Qin, Jingxin Liu, Fan Zhang, H. Meng, N. Bianchi-Berthouze
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引用次数: 27

摘要

触摸是一种主要的非语言交流渠道,用于交流情感或其他社会信息。尽管它很重要,但在情感计算领域,这个渠道仍然很少被探索,因为更多的焦点放在视觉和听觉渠道上。在本文中,我们研究了自动区分不同社交触摸类型的可能性。我们提出了五个不同的特征集来描述由压力传感器网格捕获的触摸行为。然后使用Random Forest和Boosting方法将这些特征组合在一起,对触摸手势类型进行分类。提出的方法在2015年社交触摸手势挑战提供的HAART(不同表面上的7种手势类型)和CoST(同一表面上的14种手势类型)数据集上进行了评估。HAART和CoST测试数据集的准确率分别为67%和59%,远高于机会水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Touch Gesture Recognition using Random Forest and Boosting on Distinct Feature Sets
Touch is a primary nonverbal communication channel used to communicate emotions or other social messages. Despite its importance, this channel is still very little explored in the affective computing field, as much more focus has been placed on visual and aural channels. In this paper, we investigate the possibility to automatically discriminate between different social touch types. We propose five distinct feature sets for describing touch behaviours captured by a grid of pressure sensors. These features are then combined together by using the Random Forest and Boosting methods for categorizing the touch gesture type. The proposed methods were evaluated on both the HAART (7 gesture types over different surfaces) and the CoST (14 gesture types over the same surface) datasets made available by the Social Touch Gesture Challenge 2015. Well above chance level performances were achieved with a 67% accuracy for the HAART and 59% for the CoST testing datasets respectively.
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