Jawanikanukshas01part2720phevcwebdlhi Hot -
The proliferation of ultra‑high‑definition (UHD) live streams over the internet has exposed the limits of conventional High‑Efficiency Video Coding (HEVC) pipelines when applied to heterogeneous, latency‑sensitive Web‑Delivery Live‑Streaming (WEB‑DLHI) scenarios. This paper introduces , a modular, AI‑augmented encoding framework that dynamically adapts HEVC‑based compression parameters to real‑time network conditions, device capabilities, and content characteristics. By integrating a lightweight reinforcement‑learning (RL) controller with a novel Content‑Adaptive Partitioning (CAP) module, JN‑01 achieves an average bitrate reduction of 23 % and a 37 % decrease in end‑to‑end latency compared with standard HEVC‑Main10 presets in a diverse set of live‑streaming testbeds. Extensive evaluations on a 5‑G‑enabled edge‑cloud platform demonstrate scalability to 10 000 concurrent viewers while preserving perceptual quality (average VMAF = 93.2). The results suggest that JN‑01 is a viable solution for next‑generation streaming services seeking to balance bandwidth efficiency, latency, and visual fidelity.
WEB-DL (Direct from original streaming source) jawanikanukshas01part2720phevcwebdlhi hot