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Aesthetic Image Statistics Vary with Artistic Genre

机译:审美形象统计因艺术风格而异

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摘要

Research to date has not found strong evidence for a universal link between any single low-level image statistic, such as fractal dimension or Fourier spectral slope, and aesthetic ratings of images in general. This study assessed whether different image statistics are important for artistic images containing different subjects and used partial least squares regression (PLSR) to identify the statistics that correlated most reliably with ratings. Fourier spectral slope, fractal dimension and Shannon entropy were estimated separately for paintings containing landscapes, people, still life, portraits, nudes, animals, buildings and abstracts. Separate analyses were performed on the luminance and colour information in the images. PLSR fits showed shared variance of up to 75% between image statistics and aesthetic ratings. The most important statistics and image planes varied across genres. Variation in statistics may reflect characteristic properties of the different neural sub-systems that process different types of image.
机译:迄今为止的研究尚未找到有力的证据来证明任何单个低级图像统计量(例如,分形维数或傅立叶光谱斜率)与图像的整体美学评级之间存在普遍联系。这项研究评估了不同的图像统计数据对于包含不同主题的艺术图像是否重要,并使用偏最小二乘回归(PLSR)来确定与评分最可靠相关的统计数据。对于包含风景,人物,静物,肖像,裸体,动物,建筑物和摘要的绘画,分别估计了傅里叶光谱斜率,分形维数和香农熵。对图像中的亮度和颜色信息进行了单独的分析。 PLSR拟合显示图像统计数据和美学评级之间的共享差异最大为75%。最重要的统计数据和图像平面因类型而异。统计数据的变化可能反映了处理不同类型图像的不同神经子系统的特征。

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