4.7 Article

Multiple Description Coding for Best-Effort Delivery of Light Field Video Using GNN-Based Compression

期刊

IEEE TRANSACTIONS ON MULTIMEDIA
卷 25, 期 -, 页码 690-705

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMM.2021.3129918

关键词

Streaming media; Encoding; Image coding; Decoding; Packet loss; Three-dimensional displays; Spatial resolution; Light field video; multiple description coding; best-effort video delivery; graph neural network

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This paper proposes a dynamic adaptive LF video transmission scheme that achieves high compression and near-distortion-free LF video under stable network conditions. It also introduces a description scheduling algorithm for unstable network conditions, which can decode the LF video with the highest quality even with partial and/or delayed data. Experimental results show that the scheduling algorithm improves decoding quality by 3% to 15%. Compared with similar schemes, our system greatly improves the reliability of the video streaming system against packet loss/error and supports heterogeneous receivers.
In recent years, Light Field (LF) video has grabbed much attention as an emerging form of immersive media. LF collects, through a lens matrix, light information emanating in every direction, and obtains rich information about the scene, providing users with an immersive 6 Degrees of Freedom (DoF) experience. The visual content between different viewpoints is highly homogenized, suggesting the possibility of good compression and encoding. However, most fixed-structure LF coding schemes are difficult to adapt to the real-time requirements of different LF applications and best-effort network conditions causing packet loss. In this paper, we propose a dynamic adaptive LF video transmission scheme that can achieve high compression and yet provide near-distortion-free LF video when the network condition is stable. Additionally, for unstable network conditions a description scheduling algorithm is proposed, which can decode the LF video with the highest possible quality even if partial data cannot be received completely and/or timely. We achieve this by designing a Multiple Description Coding (MDC) based solution to transport the LF video compressed by a Graph Neural Network (GNN) model. Experimental results show that the scheduling algorithm can improve the quality of the decoding results by 3% to 15%. Compared with other similar schemes, our system greatly improves the reliability of the video streaming system against packet loss/error and supports heterogeneous receivers.

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