图像美学评分分布预测的深度漂移-扩散模型

Xin Jin, Xiqiao Li, Heng Huang, Xiaodong Li, Xinghui Zhou
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引用次数: 2

摘要

审美素质评价具有主观性,任务复杂。近年来,图像审美质量的目标表征已经从一维的二元分类标签或数值分数向多维的分数分布转变。根据目前的方法,地面真值分布是直接回归的。但是,没有考虑到美学的主观性,也就是说,没有考虑到人的心理过程,这就限制了任务的执行。本文在心理学家的启发下,提出了一种深度漂移-扩散(DDD)模型来预测图像的审美评分分布。DDD模型可以描述审美感知的心理过程,而不是传统的评价结果模型。我们使用深度卷积神经网络对漂移扩散模型的参数进行回归。在大规模美学图像数据集上的实验结果表明,该模型简单有效,在美学评分分布预测方面优于现有方法。此外,我们的模型还可以预测不同的心理过程。本研究将漂移-扩散心理学模型应用于视觉美学的得分分布预测,具有启发人们对审美心理过程建模的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Drift-Diffusion Model for Image Aesthetic Score Distribution Prediction
The task of aesthetic quality assessment is complicated due to its subjectivity. In recent years, the target representation of image aesthetic quality has changed from a one-dimensional binary classification label or numerical score to a multi-dimensional score distribution. According to current methods, the ground truth score distributions are straightforwardly regressed. However, the subjectivity of aesthetics is not taken into account, that is to say, the psychological processes of human beings are not taken into consideration, which limits the performance of the task. In this paper, we propose a Deep Drift-Diffusion (DDD) model inspired by psychologists to predict aesthetic score distribution from images. The DDD model can describe the psychological process of aesthetic perception instead of traditional modelling of the results of assessment. We use deep convolution neural networks to regress the parameters of the drift-diffusion model. The experimental results in large scale aesthetic image datasets reveal that our novel DDD model is simple but efficient, which outperforms the state-of-the-art methods in aesthetic score distribution prediction. Besides, different psychological processes can also be predicted by our model. Our work applies drift-diffusion psychological model into score distribution prediction of visual aesthetics, and has the potential of inspiring more attentions to model the psychology process of aesthetic perception.
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