A toolbox for calculating quantitative image properties in aesthetics research.

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL
Christoph Redies, Ralf Bartho, Lisa Koßmann, Branka Spehar, Ronald Hübner, Johan Wagemans, Gregor U Hayn-Leichsenring
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Abstract

Over the past two decades, researchers in the field of visual aesthetics have studied numerous quantitative (objective) image properties and how they relate to visual aesthetic appreciation. However, results are difficult to compare between research groups. One reason is that researchers use different sets of image properties in their studies. However, even if the same properties are used, the image pre-processing techniques may differ, and researchers often use their own customized scripts to calculate the image properties. To provide better accessibility and comparability of research results in visual experimental aesthetics, we developed an open-access and easy-to-use toolbox called Aesthetics Toolbox. The Toolbox allows users to calculate a well-defined set of quantitative image properties popular in contemporary research. The properties include image dimensions, lightness and color statistics, complexity, symmetry, balance, Fourier spectrum properties, fractal dimension, self-similarity, as well as entropy measures and CNN-based variances. Compatible with most devices, the Toolbox provides an intuitive click-and-drop web interface. In the Toolbox, we integrated the original scripts of four different research groups and translated them into Python 3. To ensure that results were consistent across analyses, we took care that results from the Python versions of the scripts were the same as those from the original scripts. The toolbox, detailed documentation, and a link to the cloud version are available via GitHub: https://github.com/RBartho/Aesthetics-Toolbox . In summary, we developed a toolbox that helps to standardize and simplify the calculation of quantitative image properties for visual aesthetics research.

美学研究中定量图像属性计算工具箱。
在过去的二十年里,视觉美学领域的研究人员研究了大量的定量(客观)图像属性及其与视觉审美的关系。然而,研究小组之间的结果很难比较。原因之一是研究人员在研究中使用了不同的图像属性集。然而,即使使用相同的属性,图像预处理技术也可能不同,研究人员经常使用自己定制的脚本来计算图像属性。为了使视觉实验美学的研究成果更易于获取和比较,我们开发了一个开放获取和易于使用的工具箱,称为美学工具箱。工具箱允许用户计算一组定义良好的定量图像属性,在当代研究中很流行。这些属性包括图像维度、亮度和颜色统计、复杂性、对称性、平衡性、傅立叶谱特性、分形维数、自相似性、熵测度和基于cnn的方差。与大多数设备兼容,工具箱提供了一个直观的点击和下拉web界面。在工具箱中,我们集成了四个不同研究小组的原始脚本,并将它们翻译成Python 3。为了确保分析结果一致,我们注意到脚本的Python版本的结果与原始脚本的结果是相同的。工具箱、详细的文档和到云版本的链接可以通过GitHub获得:https://github.com/RBartho/Aesthetics-Toolbox。综上所述,我们开发了一个工具箱,有助于标准化和简化定量图像属性的计算,用于视觉美学研究。
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
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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