Ikejima Toshiki, Mizukoshi Koji, Nonomura Yoshimune
POLA Chemical Industries, Inc., Yokohama 244-0812, Kanagawa, Japan.
Department of Applied Chemistry, Chemical Engineering, and Biochemical Engineering, Graduate School of Science and Engineering, Yamagata University, Yonezawa 992-8510, Yamagata, Japan.
Sensors (Basel). 2024 Dec 30;25(1):147. doi: 10.3390/s25010147.
Tactile perception plays a crucial role in the perception of products and consumer preferences. This perception process is structured in hierarchical layers comprising a sensory layer (soft and smooth) and an affective layer (comfort and luxury). In this study, we attempted to predict the evaluation score of sensory and affective tactile perceptions of materials using a biomimetic multimodal tactile sensor that mimics the active touch behavior of humans and measures physical parameters such as force, vibration, and temperature. We conducted sensory and affective descriptor evaluations on 32 materials, including cosmetics, textiles, and leather. Using the physical parameters obtained by the biomimetic multimodal tactile sensor as explanatory variables, we predicted the scores of the sensory and affective descriptors in 10 regression models. The bagging regressor demonstrated the best performance, achieving a coefficient of determination () of >0.6 for fourteen of nineteen sensory and eight of twelve affective descriptors. The present model exhibited particularly high prediction accuracy for sensory descriptors such as "moist" and "elastic", and for affective descriptors such as "pleasant" and "like". These findings suggest a method to support efficient tactile design in product development across various industries by predicting tactile descriptor scores using physical parameters from a biomimetic tactile sensor.
触觉感知在产品感知和消费者偏好方面起着至关重要的作用。这种感知过程由包括感官层(柔软和平滑)和情感层(舒适和奢华)的层次结构组成。在本研究中,我们试图使用一种仿生多模态触觉传感器来预测材料的感官和情感触觉感知的评估分数,该传感器模仿人类的主动触摸行为并测量诸如力、振动和温度等物理参数。我们对32种材料进行了感官和情感描述符评估,包括化妆品、纺织品和皮革。使用仿生多模态触觉传感器获得的物理参数作为解释变量,我们在10个回归模型中预测了感官和情感描述符的分数。袋装回归器表现出最佳性能,对于19个感官描述符中的14个以及12个情感描述符中的8个,决定系数()大于0.6。本模型对诸如“湿润”和“有弹性”等感官描述符以及诸如“愉悦”和“喜欢”等情感描述符表现出特别高的预测准确性。这些发现提出了一种通过使用仿生触觉传感器的物理参数预测触觉描述符分数来支持跨行业产品开发中高效触觉设计的方法。