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使用电子鼻预测气味的跨通道对应关系。

Predicting the crossmodal correspondences of odors using an electronic nose.

作者信息

Ward Ryan J, Rahman Shammi, Wuerger Sophie, Marshall Alan

机构信息

University of Liverpool, Department of Electrical Engineering & Electronics, Liverpool, L69 3GJ, United Kingdom.

University of Lincoln, Department of Engineering, Lincoln, LN6 7TS, United Kingdom.

出版信息

Heliyon. 2022 Apr 16;8(4):e09284. doi: 10.1016/j.heliyon.2022.e09284. eCollection 2022 Apr.

Abstract

When designing multisensorial experiences, robustly predicting the crossmodal perception of olfactory stimuli is a critical factor. We investigate the possibility of predicting olfactory crossmodal correspondences using the underlying physicochemical features. An electronic nose was tuned to the crossmodal perceptual axis of olfaction and was used to foretell people's crossmodal correspondences between odors and the angularity of shapes, smoothness of texture, perceived pleasantness, pitch, and colors. We found that the underlying physicochemical features of odors could be used to predict people's crossmodal correspondences. The human-machine perceptual dimensions that correlated well are the angularity of shapes (r = 0.71), the smoothness of texture (r = 0.82), pitch (r = 0.70), and the lightness of color (r = 0.59). The human-machine perceptual dimensions that did not correlate well (r < 0.50) are the perceived pleasantness (r = 0.20) and the hue of the color (r = 0.42 & 0.44). All perceptual dimensions except for the perceived pleasantness could be robustly predicted (p-values < 0.0001) including the hue of color. While it is recognized that olfactory perception is strongly shaped by learning and experience, our findings suggest that there is a systematic and predictable link between the physicochemical features of odorous stimuli and crossmodal correspondences. These findings may provide a crucial building block towards the digital transmission of smell and enhancing multisensorial experiences with better designs as well as more engaging, and enriched experiences.

摘要

在设计多感官体验时,准确预测嗅觉刺激的跨模态感知是一个关键因素。我们研究了利用潜在的物理化学特征来预测嗅觉跨模态对应关系的可能性。一个电子鼻被调整到嗅觉的跨模态感知轴上,并用于预测人们对气味与形状的棱角、质地的光滑度、感知到的愉悦度、音高和颜色之间的跨模态对应关系。我们发现,气味的潜在物理化学特征可用于预测人们的跨模态对应关系。相关性良好的人机感知维度包括形状的棱角(r = 0.71)、质地的光滑度(r = 0.82)、音高(r = 0.70)和颜色的亮度(r = 0.59)。相关性不佳(r < 0.50)的人机感知维度是感知到的愉悦度(r = 0.20)和颜色的色调(r = 0.42和0.44)。除了感知到的愉悦度外,所有感知维度(包括颜色的色调)都能得到可靠预测(p值 < 0.0001)。虽然人们认识到嗅觉感知受学习和经验的强烈影响,但我们的研究结果表明,气味刺激的物理化学特征与跨模态对应关系之间存在系统且可预测的联系。这些发现可能为气味的数字传输以及通过更好的设计提升多感官体验、创造更具吸引力和丰富的体验提供关键的基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f072/9043411/948c5ea68182/gr1.jpg

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