Omnidirectional Image Quality Captioning: A Large-Scale Database and a New Model

Jiebin Yan;Ziwen Tan;Yuming Fang;Junjie Chen;Wenhui Jiang;Zhou Wang
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Abstract

The fast growing application of omnidirectional images calls for effective approaches for omnidirectional image quality assessment (OIQA). Existing OIQA methods have been developed and tested on homogeneously distorted omnidirectional images, but it is hard to transfer their success directly to the heterogeneously distorted omnidirectional images. In this paper, we conduct the largest study so far on OIQA, where we establish a large-scale database called OIQ-10K containing 10,000 omnidirectional images with both homogeneous and heterogeneous distortions. A comprehensive psychophysical study is elaborated to collect human opinions for each omnidirectional image, together with the spatial distributions (within local regions or globally) of distortions, and the head and eye movements of the subjects. Furthermore, we propose a novel multitask-derived adaptive feature-tailoring OIQA model named IQCaption360, which is capable of generating a quality caption for an omnidirectional image in a manner of textual template. Extensive experiments demonstrate the effectiveness of IQCaption360, which outperforms state-of-the-art methods by a significant margin on the proposed OIQ-10K database. The OIQ-10K database and the related source codes are available at https://github.com/WenJuing/IQCaption360.
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全向图像质量字幕:一个大规模数据库和一个新模型
随着全向图像应用的迅速发展,需要一种有效的全向图像质量评价方法。现有的OIQA方法已经在均匀畸变的全向图像上进行了开发和测试,但其成果很难直接应用于非均匀畸变的全向图像。在本文中,我们对OIQA进行了迄今为止最大规模的研究,我们建立了一个名为OIQ-10K的大型数据库,其中包含10,000张具有均匀和异构畸变的全向图像。一项全面的心理物理研究详细阐述了收集人类对每个全方位图像的意见,以及扭曲的空间分布(在局部区域内或全球范围内),以及受试者的头部和眼睛运动。此外,我们提出了一种新的多任务衍生自适应特征裁剪OIQA模型IQCaption360,该模型能够以文本模板的方式为全向图像生成高质量的标题。大量的实验证明了IQCaption360的有效性,在提议的OIQ-10K数据库上,它比最先进的方法有很大的优势。OIQ-10K数据库和相关源代码可在https://github.com/WenJuing/IQCaption360上获得。
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