Reinforced Rate Control for Neural Video Compression via Inter-Frame Rate–Distortion Awareness

Authors

  • Wuyang Cong Nanjing University
  • Junqi Shi Nanjing University
  • Lizhong Wang Samsung Research China-Beijing (SRC-B)
  • Weijing Shi Samsung Research China-Beijing (SRC-B)
  • Ming Lu Nanjing University
  • Hao Chen Nanjing University
  • Zhan Ma Nanjing University

DOI:

https://doi.org/10.1609/aaai.v40i17.38480

Abstract

Neural video compression (NVC) has demonstrated superior compression efficiency, yet effective rate control remains a significant challenge due to complex temporal dependencies. Existing rate control schemes typically leverage frame content to capture distortion interactions, overlooking inter-frame rate dependencies arising from shifts in per-frame coding parameters. This often leads to suboptimal bitrate allocation and cascading parameter decisions. To address this, we propose a reinforcement‑learning (RL)‑based rate control framework that formulates the task as a frame‑by‑frame sequential decision process. At each frame, an RL agent observes a spatiotemporal state and selects coding parameters to optimize a long‑term reward that reflects rate‑distortion (R-D) performance and bitrate adherence. Unlike prior methods, our approach jointly determines bitrate allocation and coding configuration in a single step, independent of group‑of‑pictures (GOP) structure. Extensive experiments across diverse NVC architectures show that our method reduces the average relative bitrate error to 1.20 percent and achieves up to 13.45 percent bitrate savings at typical GOP sizes, outperforming existing approaches. In addition, our framework demonstrates improved robustness to content variation and bandwidth fluctuations with lower encoding/decoding overhead, making it highly suitable for practical deployment.

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Published

2026-03-14

How to Cite

Cong, W., Shi, J., Wang, L., Shi, W., Lu, M., Chen, H., & Ma, Z. (2026). Reinforced Rate Control for Neural Video Compression via Inter-Frame Rate–Distortion Awareness. Proceedings of the AAAI Conference on Artificial Intelligence, 40(17), 14621–14629. https://doi.org/10.1609/aaai.v40i17.38480

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management I