基于细心端到端模型的触摸识别

Wail El Bani, M. Chetouani
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引用次数: 0

摘要

触觉是人类最早发展起来的感官,也是与外界接触的第一种方式。触摸在我们的社会情感交流中也起着关键作用:我们用它来交流我们的感受,引发他人的强烈情绪,调节行为(如顺从)。虽然与听觉和视觉相关,但在人机交互中,触觉是一种未被充分研究的方式。大多数社交触摸识别系统都需要一个特征工程步骤,这使得它们难以比较和推广到其他数据库。在本文中,我们提出了一种端到端方法。在ICMI 15社交触摸挑战的背景下,我们提出了一个基于注意力的端到端触摸手势识别模型,该模型在两个公共数据集(CoST和HAART)上进行了评估。我们的模型给出了类似的精度水平:成本为61%,HAART为68%,并使用自关注作为特征工程和循环神经网络的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Touch Recognition with Attentive End-to-End Model
Touch is the earliest sense to develop and the first mean of contact with the external world. Touch also plays a key role in our socio-emotional communication: we use it to communicate our feelings, elicit strong emotions in others and modulate behavior (e.g compliance). Although its relevance, touch is an understudied modality in Human-Machine-Interaction compared to audition and vision. Most of the social touch recognition systems require a feature engineering step making them difficult to compare and to generalize to other databases. In this paper, we propose an end-to-end approach. We present an attention-based end-to-end model for touch gesture recognition evaluated on two public datasets (CoST and HAART) in the context of the ICMI 15 Social Touch Challenge. Our model gave a similar level of accuracy: 61% for CoST and 68% for HAART and uses self-attention as an alternative to feature engineering and Recurrent Neural Networks.
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