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Saliency-driven omnidirectional imaging adaptive coding: Modeling and assessment | IEEE Conference Publication | IEEE Xplore

Saliency-driven omnidirectional imaging adaptive coding: Modeling and assessment


Abstract:

Omnidirectional imaging, also known as 360° and spherical imaging, records all 360° of a scene from a specific spatial position, thus offering the user the capability to ...Show More

Abstract:

Omnidirectional imaging, also known as 360° and spherical imaging, records all 360° of a scene from a specific spatial position, thus offering the user the capability to enjoy three rotational degrees of freedom (3-DoF). To offer a good quality of experience, omnidirectional imaging requires very high bitrates as high spatial resolution are a must and, ideally, also high frame rates. Due to the lack of video coding solutions specifically designed for omnidirectional imaging, this type of content is typically coded with the available image and video coding standards, such as JPEG, H.264/AVC and HEVC, after applying a 2D rectangular projection. In this context, this paper proposes an omnidirectional imaging coding solution allowing to reach improved coding performance by using an adaptive coding solution where the most visually salient image/video regions are coded with higher quality in a process appropriately controlled by the quantization parameter. To determine the saliency of the various omnidirectional imaging regions, a machine-learning based saliency detection model is proposed. The proposed coding solution achieves compression gains as measured by a novel objective quality metric also driven by saliency. This novel objective quality metric is validated by formal subjective testing where very high correlations with the subjective tests scores are achieved.
Date of Conference: 16-18 October 2017
Date Added to IEEE Xplore: 30 November 2017
ISBN Information:
Electronic ISSN: 2473-3628
Conference Location: Luton, UK

References

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