Omnidirectional image quality assessment (OIQA) aims to predict the perceptual quality of omnidirectional images that cover the whole 180$\times$360$^{\circ}$ viewing range of the visual environment. Here we propose a blind/no-reference OIQA method named S$^2$ that bridges the gap between low-level statistics and high-level semantics of omnidirectional images. Specifically, statistic and semantic features are extracted in separate paths from multiple local viewports and the hallucinated global omnidirectional image, respectively. A quality regression along with a weighting process is then followed that maps the extracted quality-aware features to a perceptual quality prediction. Experimental results demonstrate that the proposed S$^2$ method offers highly competitive performance against state-of-the-art methods.
翻译:整个方向图像质量评估(OIQA)旨在预测覆盖整个视觉环境范围180美元 360美元 <unk> circ}$$ 的全方向图像的感官质量。在这里,我们提议了一个名为S$2美元的盲/无参考 OIQA 方法,以弥合低水平统计数据与全方向图像高层次语义学之间的差距。具体地说,统计和语义特征分别从多处当地视场和环球环球光学图像的不同路径中分离出来。然后是质量回归和加权过程,然后将提取的质量觉悟特征绘制成感官质量预测。实验结果表明,拟议的S$2美元方法与最先进的方法相比具有高度竞争力的性能。</s>