基于摄影构图规则的图像审美质量评价

Guoxiang Zeng, Ping Shi
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引用次数: 0

摘要

图像构图是图像美学的重要组成部分。本文从图像本身的构图出发,利用多任务学习的方法,将美学深层特征与构图特征相结合。我们总结了三分法等一系列最经典的摄影构图规则的计算公式,并计算了图像的构图特征和分数。在多任务学习模块中,我们设计了具有静态共享结构的双列网络。采用软参数共享的方法融合不同网络的特征。使用图像的构图分数和原始美学分数来监督网络的训练。在AVA-mini数据集上的实验表明,多任务学习可以更好地利用图像的组成信息。该方法在图像审美质量评价的回归任务上表现优异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Aesthetic Quality Assessment Based on Photographic Composition Rules
Image composition is a vital factor in image aesthetics. In this paper, based on photographic composition of the image itself, we combine the aesthetic deep features with composition features by utilizing multi-task learning. We summarize a series of calculation formulas of the most classic photographic composition rules, such as the rule of thirds, and calculate the composition features and scores of the images. In multi-task learning module, we design double-column networks with static sharing structures. Features from different networks are fused by the method of soft parameter sharing. The composition score and the original aesthetic score of the image are used to supervise the training of the networks. Experiments on AVA-mini dataset show that the multi-task learning can make better use of the composition information of the image. Our method can outperform on the regression task of the image aesthetic quality assessment.
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