CVFeb 15

HiVid: LLM-Guided Video Saliency For Content-Aware VOD And Live Streaming

arXiv:2602.14214v1
Originality Highly original
AI Analysis

This addresses the challenge of expensive human annotation and poor generalization of vision-saliency models for optimizing quality of experience in video streaming.

The paper tackles the problem of generating dynamic importance weights for content-aware video streaming by introducing HiVid, a framework that uses Large Language Models as a scalable human proxy, achieving improvements of up to 11.5% in weight prediction accuracy for VOD and 26% for live streaming over state-of-the-art baselines.

Content-aware streaming requires dynamic, chunk-level importance weights to optimize subjective quality of experience (QoE). However, direct human annotation is prohibitively expensive while vision-saliency models generalize poorly. We introduce HiVid, the first framework to leverage Large Language Models (LLMs) as a scalable human proxy to generate high-fidelity weights for both Video-on-Demand (VOD) and live streaming. We address 3 non-trivial challenges: (1) To extend LLMs' limited modality and circumvent token limits, we propose a perception module to assess frames in a local context window, autoregressively building a coherent understanding of the video. (2) For VOD with rating inconsistency across local windows, we propose a ranking module to perform global re-ranking with a novel LLM-guided merge-sort algorithm. (3) For live streaming which requires low-latency, online inference without future knowledge, we propose a prediction module to predict future weights with a multi-modal time series model, which comprises a content-aware attention and adaptive horizon to accommodate asynchronous LLM inference. Extensive experiments show HiVid improves weight prediction accuracy by up to 11.5\% for VOD and 26\% for live streaming over SOTA baselines. Real-world user study validates HiVid boosts streaming QoE correlation by 14.7\%.

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