论文标题
在混合多属性数据集上以数值为单位的美学属性评估
Aesthetic Attribute Assessment of Images Numerically on Mixed Multi-attribute Datasets
论文作者
论文摘要
随着社交软件和多媒体技术的持续发展,图像已成为传播信息和社交的重要载体。如何全面评估图像已成为最近研究的重点。传统的图像美学评估方法通常采用单个数值的总体评估评分,该评估具有一定的主观性,无法再满足更高的美学要求。在本文中,我们构建了一个新的图像属性数据集,称为Aesthetic混合数据集,具有属性(AMD-A)和设计融合的外部属性功能。此外,我们为混合多属性数据集的图像美学属性评估提出了一种有效的方法,并通过使用Extisticnet-B0作为骨干网络来构建多任务网络体系结构。我们的模型可以实现美学分类,整体评分和属性评分。在每个子网络中,我们通过ECA通道注意模块改进特征提取。至于最终的整体得分,我们采用教师学生网络的想法,并使用分类子网络来指导美学的整体细粒回归。实验结果使用Mindspore表明,我们提出的方法可以有效地改善美学整体和属性评估的性能。
With the continuous development of social software and multimedia technology, images have become a kind of important carrier for spreading information and socializing. How to evaluate an image comprehensively has become the focus of recent researches. The traditional image aesthetic assessment methods often adopt single numerical overall assessment scores, which has certain subjectivity and can no longer meet the higher aesthetic requirements. In this paper, we construct an new image attribute dataset called aesthetic mixed dataset with attributes(AMD-A) and design external attribute features for fusion. Besides, we propose a efficient method for image aesthetic attribute assessment on mixed multi-attribute dataset and construct a multitasking network architecture by using the EfficientNet-B0 as the backbone network. Our model can achieve aesthetic classification, overall scoring and attribute scoring. In each sub-network, we improve the feature extraction through ECA channel attention module. As for the final overall scoring, we adopt the idea of the teacher-student network and use the classification sub-network to guide the aesthetic overall fine-grain regression. Experimental results, using the MindSpore, show that our proposed method can effectively improve the performance of the aesthetic overall and attribute assessment.