Real-Time Neural Video Compression with Unified Intra and Inter Coding

arXiv — cs.CVWednesday, November 5, 2025 at 5:00:00 AM

Real-Time Neural Video Compression with Unified Intra and Inter Coding

Recent developments in neural video compression (NVC) have introduced DCVC-RT, a technology that significantly enhances compression efficiency compared to traditional standards such as H.266/VVC. This advancement not only improves the compactness of video data but also enables real-time encoding and decoding capabilities, marking a notable step forward in video processing performance. Despite these improvements, certain challenges persist, including issues related to disocclusion and the propagation of errors between frames during interframe coding. These challenges highlight ongoing areas for research and optimization within the field. The integration of unified intra and inter coding techniques in DCVC-RT exemplifies the innovative approaches being explored to address these complexities. Overall, while DCVC-RT represents a meaningful progression in NVC technology, further work is required to fully overcome the remaining technical obstacles. This context aligns with recent discussions in related research, underscoring both the promise and the hurdles of real-time neural video compression.

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