Image aesthetic quality assessment (AQA) aims to assign numerical aesthetic ratings to images whilst image aesthetic captioning (IAC) aims to generate textual descriptions of the aesthetic aspects of images. In this paper, we study image AQA and IAC together and present a new IAC method termed Aesthetically Relevant Image Captioning (ARIC). Based on the observation that most textual comments of an image are about objects and their interactions rather than aspects of aesthetics, we first introduce the concept of Aesthetic Relevance Score (ARS) of a sentence and have developed a model to automatically label a sentence with its ARS. We then use the ARS to design the ARIC model which includes an ARS weighted IAC loss function and an ARS based diverse aesthetic caption selector (DACS). We present extensive experimental results to show the soundness of the ARS concept and the effectiveness of the ARIC model by demonstrating that texts with higher ARS's can predict the aesthetic ratings more accurately and that the new ARIC model can generate more accurate, aesthetically more relevant and more diverse image captions. Furthermore, a large new research database containing 510K images with over 5 million comments and 350K aesthetic scores, and code for implementing ARIC are available at https://github.com/PengZai/ARIC.
翻译:图像审美质量评估(AQA)旨在对图像进行数字审美评级,而图像审美说明(IAC)旨在生成图像审美方面的文字描述。在本文中,我们共同研究图像AQA和IAC,并提出一种新的IAC方法,名为“审美相关图像描述(ARIC)。基于对图像的大多数文字评论都是关于对象及其相互作用而不是审美方面的观察,我们首先引入了判决中审美相关性评的概念,并开发了与ARS自动标出句子的模型。然后我们利用ARS设计了ARIC模型,其中包括ARS加权的IAC损失功能和基于ARS的多种审美学说明选择(DAS)的AQAQA和IAC。我们提出了广泛的实验结果,以显示ARS概念的正确性以及ARC模型的有效性,通过证明具有高级ARS的文本可以更准确地预测审美评级,新的ARICS模型可以产生更准确、更贴、更多样化的图像说明。此外,我们使用ARCMA/RIA的高级研究数据库中含有5K 和5K Z的35K 的新的研究数据库。