December 2020 Congratulations to Xuemei Zhou on her paper “Projection Invariant Feature and Visual Saliency Based Stereoscopic Omnidirectional Image Quality Assessment” accepted by IEEE Transactions on Broadcasting.

Fig. 1 Proposed projection invariant feature and visual saliency based SOIQA method

In this paper, we propose a quality assessment model based on the projection invariant feature and the visual saliency for Stereoscopic Omnidirectional Images (SOIs). Firstly, monocular and binocular features of SOI, as the projection invariant feature, are derived from the Scale-Invariant Feature Transform (SIFT) points to tackle the inconsistency between the stretched projection formats and the viewports. Secondly, the visual saliency model, combined with the perceptual factors, i.e., the chrominance and contrast, facilitates the prediction accuracy. Thirdly, according to the characteristics of the panoramic image, we generate the weight map and utilize it as a location prior, which can be adapted to different projection formats. Finally, the proposed SOI quality assessment model fuses the projection invariant feature, visual saliency, and location prior, as shown in Fig. 1. Experimental results on both the NingBo University SOI Database (NBU-SOID) and Stereoscopic OmnidirectionaL Image quality assessment Database (SOLID) demonstrate the proposed metric on equi-rectangular projection format outperforms the state-of-the-art schemes, the pearson linear correlation coefficient and spearman rank order correlation coefficient performance are 0.933 and 0.933 on SOLID, and 0.907 and 0.910 on NBU-SOID, respectively. Meanwhile, the proposed algorithm is extended to other five representative projection formats and achieves the superior performance.