Assessing photo quality with geo-context and crowdsourced photos

Wenyuan Yin, Tao Mei, Chang Wen Chen
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引用次数: 22

Abstract

Automatic photo quality assessment emerged as a hot topic in recent years for its potential in numerous applications. Most existing approaches to photo quality assessment have predominantly focused on image content itself, while ignoring various contexts such as the associated geo-location and timestamp. However, such a universal aesthetic assessment model may not work well with significantly different contexts, since the photography rules are always scene and context dependent. In real cases, professional photographers use different photography knowledge when shooting various scenes in different places. Motivated by this observation, we leverage the geo-context information associated with photos for visual quality assessment. Specifically, we propose in this paper a Scene-Dependent Aesthetic Model (SDAM) to assess photo quality, by jointly leveraging the geo-context and visual content. Geo-contextual leveraged searching is performed to obtain relevant images with similar content to discover the scene-dependent photography principles for accurate photo quality assessment. To overcome the problem that in many cases the number of the contextually searched images is insufficient for learning the SDAM, we adopt transfer learning to utilize auxiliary photos within the same scene category from other locations for learning photography rules. Extensive experiments shows that the proposed SDAM scheme indeed improves the photo quality assessment accuracy via leveraging photo geo-contexts, compared with traditional universal aesthetic models.
通过地理环境和众包照片评估照片质量
近年来,自动照片质量评估因其在众多应用领域的潜力而成为一个热门话题。大多数现有的照片质量评估方法主要集中在图像内容本身,而忽略了各种上下文,如相关的地理位置和时间戳。然而,这种普遍的审美评价模型可能不适用于显著不同的语境,因为摄影规则总是依赖于场景和语境。在实际案例中,专业摄影师在拍摄不同地点的不同场景时,会用到不同的摄影知识。受此启发,我们利用与照片相关的地理环境信息进行视觉质量评估。具体而言,我们在本文中提出了一个场景依赖美学模型(SDAM),通过共同利用地理背景和视觉内容来评估照片质量。通过地理上下文杠杆搜索,获得具有相似内容的相关图像,从而发现场景相关的摄影原理,从而进行准确的照片质量评估。为了克服在很多情况下上下文搜索图像的数量不足以学习SDAM的问题,我们采用迁移学习的方法,利用来自其他位置的同一场景类别内的辅助照片来学习摄影规则。大量的实验表明,与传统的通用美学模型相比,所提出的SDAM方案确实通过利用照片地理背景提高了照片质量评估的准确性。
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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