Li Leida, Zhu Hancheng, Zhao Sicheng, Ding Guiguang, Lin Weisi
IEEE Trans Image Process. 2020 Jan 27. doi: 10.1109/TIP.2020.2968285.
Traditional image aesthetics assessment (IAA) approaches mainly predict the average aesthetic score of an image. However, people tend to have different tastes on image aesthetics, which is mainly determined by their subjective preferences. As an important subjective trait, personality is believed to be a key factor in modeling individual's subjective preference. In this paper, we present a personality-assisted multi-task deep learning framework for both generic and personalized image aesthetics assessment. The proposed framework comprises two stages. In the first stage, a multi-task learning network with shared weights is proposed to predict the aesthetics distribution of an image and Big-Five (BF) personality traits of people who like the image. The generic aesthetics score of the image can be generated based on the predicted aesthetics distribution. In order to capture the common representation of generic image aesthetics and people's personality traits, a Siamese network is trained using aesthetics data and personality data jointly. In the second stage, based on the predicted personality traits and generic aesthetics of an image, an inter-task fusion is introduced to generate individual's personalized aesthetic scores on the image. The performance of the proposed method is evaluated using two public image aesthetics databases. The experimental results demonstrate that the proposed method outperforms the state-of-the-arts in both generic and personalized IAA tasks.
传统的图像美学评估(IAA)方法主要预测图像的平均美学分数。然而,人们对图像美学往往有不同的品味,这主要由他们的主观偏好决定。作为一种重要的主观特征,个性被认为是建模个体主观偏好的关键因素。在本文中,我们提出了一种用于通用和个性化图像美学评估的个性辅助多任务深度学习框架。所提出的框架包括两个阶段。在第一阶段,提出了一个具有共享权重的多任务学习网络,以预测图像的美学分布以及喜欢该图像的人的大五(BF)个性特征。基于预测的美学分布可以生成图像的通用美学分数。为了捕捉通用图像美学和人们个性特征的共同表示,使用美学数据和个性数据联合训练一个孪生网络。在第二阶段,基于预测的图像个性特征和通用美学,引入任务间融合以生成个体对该图像的个性化美学分数。使用两个公共图像美学数据库对所提出方法的性能进行评估。实验结果表明,所提出的方法在通用和个性化IAA任务中均优于现有技术。