相对美学的计算方法

Vijetha Gattupalli, P. S. Chandakkar, Baoxin Li
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引用次数: 6

摘要

计算视觉美学近年来成为一个活跃的研究领域。现有的最先进的方法将其表述为一个二元分类任务,其中给定的图像被预测为美丽或不美丽。在图像检索和增强等许多应用中,基于图像的审美质量对图像进行排序比基于图像的二值分类更为重要。此外,在这种应用中,可能所有图像都属于同一类别。因此确定图像的审美排序是比较合适的。为此,我们提出了一个新的问题,即根据图像的审美质量对其进行排名。我们通过从流行的AVA数据集中仔细选择图像来构建具有相对标签的图像对的新数据集。与美学分类不同,没有单一的阈值来决定整个数据集中图像的排名顺序。我们提出了一种基于深度神经网络的方法,该方法通过结合相对学习原理对图像对进行训练。结果表明,这种相对训练过程使我们的网络能够以比使用二值标签在同一组图像上训练的最先进的网络更高的精度对图像进行排名。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A computational approach to relative aesthetics
Computational visual aesthetics has recently become an active research area. Existing state-of-art methods formulate this as a binary classification task where a given image is predicted to be beautiful or not. In many applications such as image retrieval and enhancement, it is more important to rank images based on their aesthetic quality instead of binary-categorizing them. Furthermore, in such applications, it may be possible that all images belong to the same category. Hence determining the aesthetic ranking of the images is more appropriate. To this end, we formulate a novel problem of ranking images with respect to their aesthetic quality. We construct a new dataset of image pairs with relative labels by carefully selecting images from the popular AVA dataset. Unlike in aesthetics classification, there is no single threshold which would determine the ranking order of the images across our entire dataset. We propose a deep neural network based approach that is trained on image pairs by incorporating principles from relative learning. Results show that such relative training procedure allows our network to rank the images with a higher accuracy than a state-of-art network trained on the same set of images using binary labels.
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