Perceptual dimensions of wood materials.

IF 2 4区 心理学 Q2 OPHTHALMOLOGY
Jirí Filip, Jirí Lukavský, Filip Dechterenko, Filipp Schmidt, Roland W Fleming
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引用次数: 0

Abstract

Materials exhibit an extraordinary range of visual appearances. Characterizing and quantifying appearance is important not only for basic research on perceptual mechanisms but also for computer graphics and a wide range of industrial applications. Although methods exist for capturing and representing the optical properties of materials and how they vary across surfaces (Haindl & Filip, 2013), the representations are typically very high-dimensional, and how these representations relate to subjective perceptual impressions of material appearance remains poorly understood. Here, we used a data-driven approach to characterizing the perceived appearance characteristics of 30 samples of wood veneer using a "visual fingerprint" that describes each sample as a multidimensional feature vector, with each dimension capturing a different aspect of the appearance. Fifty-six crowd-sourced participants viewed triplets of movies depicting different wood samples as the sample rotated. Their task was to report which of the two match samples was subjectively most similar to the test sample. In another online experiment, 45 participants rated 10 wood-related appearance characteristics for each of the samples. The results reveal a consistent embedding of the samples across both experiments and a set of nine perceptual dimensions capturing aspects including the roughness, directionality, and spatial scale of the surface patterns. We also showed that a weighted linear combination of 11 image statistics, inspired by the rating characteristics, predicts perceptual dimensions well.

木质材料的感知尺寸。
材料的视觉外观千变万化。表征和量化外观不仅对感知机制的基础研究很重要,而且对计算机制图和广泛的工业应用也很重要。虽然已有方法可以捕捉和表示材料的光学特性以及它们在不同表面的变化情况(Haindl & Filip,2013 年),但这些表示通常非常高维,而且人们对这些表示与材料外观的主观感知印象之间的关系仍然知之甚少。在这里,我们采用了一种数据驱动的方法,使用 "视觉指纹 "来描述 30 个木皮样本的感知外观特征,"视觉指纹 "将每个样本描述为一个多维特征向量,每个维度捕捉外观的一个不同方面。56 名来自不同人群的参与者观看了描述不同木材样本的三联影片,并随着样本的旋转而旋转。他们的任务是报告两个匹配样本中哪个主观上与测试样本最相似。在另一项在线实验中,45 名参与者对每个样本的 10 个与木材相关的外观特征进行了评分。结果表明,两次实验中样本的嵌入都是一致的,而且有一组九个感知维度可以捕捉到包括表面图案的粗糙度、方向性和空间尺度等方面。我们还表明,受评级特征的启发,11 种图像统计信息的加权线性组合可以很好地预测感知维度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Vision
Journal of Vision 医学-眼科学
CiteScore
2.90
自引率
5.60%
发文量
218
审稿时长
3-6 weeks
期刊介绍: Exploring all aspects of biological visual function, including spatial vision, perception, low vision, color vision and more, spanning the fields of neuroscience, psychology and psychophysics.
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