EVA: An Explainable Visual Aesthetics Dataset

Chen Kang, G. Valenzise, F. Dufaux
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引用次数: 17

Abstract

Assessing visual aesthetics has important applications in several domains, from image retrieval and recommendation to enhancement. Modern aesthetic quality predictors are data driven, and leverage the availability of large annotated datasets to train accurate models. However, labels in existing datasets are often noisy, incomplete or they do not allow more sophisticated tasks such as understanding why an image looks beautiful or not to a human observer. In this paper, we propose an Explainable Visual Aesthetics (EVA) dataset, which contains 4070 images with at least 30 votes per image. Compared to previous datasets, EVA has been crowdsourced using a more disciplined approach inspired by quality assessment best practices. It also offers additional features, such as the degree of difficulty in assessing the aesthetic score, rating for 4 complementary aesthetic attributes, as well as the relative importance of each attribute to form aesthetic opinions. A statistical analysis on EVA demonstrates that the collected attributes and relative importance can be linearly combined to explain effectively the overall aesthetic mean opinion scores. The dataset, made publicly available, is expected to contribute to future research on understanding and predicting visual quality aesthetics.
EVA:可解释的视觉美学数据集
视觉美学评估在图像检索、推荐和增强等多个领域都有重要的应用。现代美学质量预测器是数据驱动的,并利用大型注释数据集的可用性来训练准确的模型。然而,现有数据集中的标签通常是嘈杂的、不完整的,或者它们不允许更复杂的任务,例如理解为什么图像看起来漂亮或不适合人类观察者。在本文中,我们提出了一个可解释视觉美学(EVA)数据集,该数据集包含4070张图像,每张图像至少有30张选票。与之前的数据集相比,EVA采用了受质量评估最佳实践启发的更严格的方法进行众包。它还提供了额外的功能,例如评估美学分数的难度程度,4个互补美学属性的评级,以及每个属性对形成美学观点的相对重要性。EVA的统计分析表明,所收集的属性和相对重要性可以线性结合,有效地解释整体审美平均意见得分。该数据集已公开,有望为理解和预测视觉质量美学的未来研究做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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