Empowering Agentic Video Analytics Systems with Video Language Models
Empowering Agentic Video Analytics Systems with Video Language Models
AI-driven video analytics has become increasingly pivotal across diverse domains. However, existing systems are often constrained to specific, predefined tasks, limiting their adaptability in open-ended analytical scenarios. The recent emergence of Video-Language Models (VLMs) as transformative technologies offers significant potential for enabling open-ended video understanding, reasoning, and analytics. Nevertheless, their limited context windows present challenges when processing ultra-long video content, which is prevalent in real-world applications. To address this, we introduce AVAS, a VLM-powered system designed for open-ended, advanced video analytics. AVAS incorporates two key innovations: (1) the near real-time construction of Event Knowledge Graphs (EKGs) for efficient indexing of long or continuous video streams, and (2) an agentic retrieval-generation mechanism that leverages EKGs to handle complex and diverse queries. Comprehensive evaluations on public benchmarks, LVBench and VideoMME-Long, demonstrate that AVAS achieves state-of-the-art performance, attaining 62.3% and 64.1% accuracy, respectively, significantly surpassing existing VLM and video Retrieval-Augmented Generation (RAG) systems. Furthermore, to evaluate video analytics in ultra-long and open-world video scenarios, we introduce a new benchmark, AVAS-100. This benchmark comprises 8 videos, each exceeding 10 hours in duration, along with 120 manually annotated, diverse, and complex question-answer pairs. On AVAS-100, AVAS achieves top-tier performance with an accuracy of 75.8%.
Yuxuan Yan、Shiqi Jiang、Ting Cao、Yifan Yang、Qianqian Yang、Yuanchao Shu、Yuqing Yang、Lili Qiu
计算技术、计算机技术
Yuxuan Yan,Shiqi Jiang,Ting Cao,Yifan Yang,Qianqian Yang,Yuanchao Shu,Yuqing Yang,Lili Qiu.Empowering Agentic Video Analytics Systems with Video Language Models[EB/OL].(2025-04-30)[2025-06-24].https://arxiv.org/abs/2505.00254.点此复制
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