Personalized image aesthetic assessment (PIAA) has recently become a hot topic due to its usefulness in a wide variety of applications such as photography, film and television, e-commerce, fashion design and so on. This task is more seriously affected by subjective factors and samples provided by users. In order to acquire precise personalized aesthetic distribution by small amount of samples, we propose a novel user-guided personalized image aesthetic assessment framework. This framework leverages user interactions to retouch and rank images for aesthetic assessment based on deep reinforcement learning (DRL), and generates personalized aesthetic distribution that is more in line with the aesthetic preferences of different users. It mainly consists of two stages. In the first stage, personalized aesthetic ranking is generated by interactive image enhancement and manual ranking, meanwhile two policy networks will be trained. The images will be pushed to the user for manual retouching and simultaneously to the enhancement policy network. The enhancement network utilizes the manual retouching results as the optimization goals of DRL. After that, the ranking process performs the similar operations like the retouching mentioned before. These two networks will be trained iteratively and alternatively to help to complete the final personalized aesthetic assessment automatically. In the second stage, these modified images are labeled with aesthetic attributes by one style-specific classifier, and then the personalized aesthetic distribution is generated based on the multiple aesthetic attributes of these images, which conforms to the aesthetic preference of users better.
翻译:个人化图像审美评估(PIAAA)最近已成为一个热门话题,因为它在诸如摄影、电影和电视、电子商务、时装设计等各种应用中很有用,因此最近已成为一个热门话题。这项任务受到主观因素和用户提供的样本的更严重影响。为了通过少量样本获得精确的个人化美学分布,我们提议了一个由用户指导的个人化图像审美评估框架。这个框架利用用户互动,根据深度强化学习(DRL)进行审美评估,对图像进行重新触摸和排序,产生个人化的美学分布,更符合不同用户的美学偏好。它主要由两个阶段组成。在第一阶段,个人化的美学排名是通过互动的图像增强和人工排序产生,同时对两个政策网络进行培训,将图像推向用户进行手工改造,并同时推向强化政策网络。加强网络利用人工审美学结果作为DRL的优化目标。此后,排序过程将进行与前述的最终审美学偏好一样,主要由两个阶段的用户进行类似的操作。这两个网络将进行互动性化,然后通过个人性化性化性化性化性化,然后对个人性化一个图像进行个人性化的属性进行个人性化,然后将进行个人性化,然后进行个人性化,然后进行个人性化的品化的性化的性化。