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State-of-the-art in 360° Video/Image Processing: Perception, Assessment and Compression

2019-05-01
Chen Li, Mai Xu, Shanyi Zhang, Patrick Le Callet

Abstract

Nowadays, 360° video/image has been increasingly popular and drawn great attention. The spherical viewing range of 360° video/image accounts for huge data, which pose the challenges to 360° video/image processing in solving the bottleneck of storage, transmission, etc. Accordingly, the recent years have witnessed the explosive emergence of works on 360° video/image processing. In this paper, we review the state-of-the-art works on 360° video/image processing from the aspects of perception, assessment and compression. First, this paper reviews both datasets and visual attention modelling approaches for 360° video/image. Second, we survey the related works on both subjective and objective visual quality assessment (VQA) of 360° video/image. Third, we overview the compression approaches for 360° video/image, which either utilize the spherical characteristics or visual attention models. Finally, we summarize this overview paper and outlook the future research trends on 360° video/image processing.

Abstract (translated by Google)
URL

https://arxiv.org/abs/1905.00161

PDF

https://arxiv.org/pdf/1905.00161


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