Carballal Adrian, Fernandez-Lozano Carlos, Rodriguez-Fernandez Nereida, Santos Iria, Romero Juan
CITIC-Research Center of Information and Communication Technologies, University of A Coruña, 15071 A Coruña, Spain.
Department of Computer Science and Information Technologies, Faculty of Computer Science, University of A Coruña, Campus Elviña s/n, 15071 A Coruña, Spain.
Entropy (Basel). 2020 Apr 24;22(4):488. doi: 10.3390/e22040488.
Providing the visual complexity of an image in terms of impact or aesthetic preference can be of great applicability in areas such as psychology or marketing. To this end, certain areas such as Computer Vision have focused on identifying features and computational models that allow for satisfactory results. This paper studies the application of recent ML models using input images evaluated by humans and characterized by features related to visual complexity. According to the experiments carried out, it was confirmed that one of these methods, Correlation by Genetic Search (CGS), based on the search for minimum sets of features that maximize the correlation of the model with respect to the input data, predicted human ratings of image visual complexity better than any other model referenced to date in terms of correlation, RMSE or minimum number of features required by the model. In addition, the variability of these terms were studied eliminating images considered as outliers in previous studies, observing the robustness of the method when selecting the most important variables to make the prediction.
从影响力或审美偏好的角度来描述图像的视觉复杂性,在心理学或市场营销等领域可能具有很大的适用性。为此,诸如计算机视觉等特定领域专注于识别能够产生令人满意结果的特征和计算模型。本文研究了使用由人类评估并以与视觉复杂性相关的特征为特征的输入图像的近期机器学习模型的应用。根据所进行的实验,证实了这些方法之一,即基于搜索使模型与输入数据的相关性最大化的最小特征集的遗传搜索相关性(CGS),在相关性、均方根误差(RMSE)或模型所需的最小特征数量方面,比迄今为止引用的任何其他模型都能更好地预测图像视觉复杂性的人类评分。此外,研究了这些指标的变异性,剔除了先前研究中被视为异常值的图像,观察了该方法在选择最重要变量进行预测时的稳健性。