IEEE Trans Haptics. 2023 Oct-Dec;16(4):504-510. doi: 10.1109/TOH.2023.3269797. Epub 2023 Dec 21.
In this study, we developed the first tactile perception system for sensory evaluation based on a microelectromechanical systems (MEMS) tactile sensor with an ultrahigh resolution exceeding than that of a human fingertip. Sensory evaluation was performed on 17 fabrics using a semantic differential method with six evaluation words such as "smooth". Tactile signals were obtained at a spatial resolution of 1 µm; the total data length of each fabric was 300 mm. The tactile perception for sensory evaluation was realized with a convolutional neural network as a regression model. The performance of the system was evaluated using data not used for training as unknown fabric. First, we obtained the relationship of the mean squared error (MSE) to the input data length [Formula: see text]. The MSE was 0.27 at [Formula: see text]300 mm. Then, the sensory evaluation and model estimated scores were compared; 89.2% of the evaluation words were successfully predicted at [Formula: see text]300 mm. A system that enables the quantitative comparison of the tactile sensation of new fabrics with existing fabrics has been realized. In addition, the region of the fabric affects each tactile sensation visualized by a heatmap, which can lead to a design policy for achieving the ideal product tactile sensation.
在这项研究中,我们开发了第一个基于具有超高分辨率(超过人类指尖)的微机电系统(MEMS)触觉传感器的触觉感知系统,用于感官评估。使用具有“平滑”等六个评估词的语义差分法对 17 种织物进行了感官评估。触觉信号的空间分辨率为 1μm;每种织物的总数据长度为 300mm。触觉感知是通过作为回归模型的卷积神经网络来实现的。使用未用于训练的未知织物数据评估了系统的性能。首先,我们获得了均方误差(MSE)与输入数据长度[公式:见文本]之间的关系。在[公式:见文本]300mm 时,MSE 为 0.27。然后,对感官评估和模型估计分数进行了比较;在[公式:见文本]300mm 时,89.2%的评估词成功预测。已经实现了一种能够对新织物和现有织物的触觉进行定量比较的系统。此外,织物的区域会影响热图可视化的每个触觉,这可以为实现理想产品触觉的设计策略提供指导。