Real-Time Semantic Video Communication of General Scenes
Abstract
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This paper presents a real-time semantic video communication method for general scenes, combining lossy semantic map coding with motion compensation to achieve reduced bit rates while maintaining perceptual and semantic quality. Our findings show that semantic image synthesis effectively adapts to minute errors resulting from motion estimation, eliminating the need to transmit the residuals. We recommend the Group of Pictures approach as a more efficient alternative. Comparative assessments against HEVC and VVC confirm the method’s effectiveness. This research paves the way for efficient real-time semantic video communication, addressing the demands of data-intensive visual applications.