VoLUT: Efficient Volumetric streaming enhanced by LUT-based super-resolution

arXiv — cs.CVFriday, December 5, 2025 at 5:00:00 AM
  • VoLUT has been developed as an innovative solution for efficient streaming of 3D volumetric video, addressing the significant bandwidth challenges associated with this immersive content. By downsampling the video data before transmission and employing a new super-resolution algorithm that utilizes lookup tables (LUTs), VoLUT aims to enhance the viewer experience by reconstructing high-resolution details at the receiver's end.
  • This advancement is crucial as it not only improves the accessibility of volumetric video content but also aligns with the growing demand for high-quality digital media experiences. The ability to stream volumetric video efficiently can lead to broader adoption in various sectors, including entertainment, education, and virtual reality applications.
  • The development of VoLUT reflects a broader trend in the field of artificial intelligence and computer vision, where innovative techniques are being employed to enhance video quality and streaming efficiency. This aligns with ongoing research into super-resolution methods and multimodal frameworks for dynamic content generation, highlighting the industry's focus on overcoming technical limitations and improving user engagement in digital media.
— via World Pulse Now AI Editorial System

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