AVATAAR: Agentic Video Answering via Temporal Adaptive Alignment and Reasoning
- URL: http://arxiv.org/abs/2511.15578v1
- Date: Wed, 19 Nov 2025 16:09:38 GMT
- Title: AVATAAR: Agentic Video Answering via Temporal Adaptive Alignment and Reasoning
- Authors: Urjitkumar Patel, Fang-Chun Yeh, Chinmay Gondhalekar,
- Abstract summary: AVATAAR is a modular framework that combines global and local video context, along with a Pre Retrieval Thinking Agent and a Rethink Module.<n>On the CinePile benchmark, AVATAAR demonstrates significant improvements over a baseline.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: With the increasing prevalence of video content, effectively understanding and answering questions about long form videos has become essential for numerous applications. Although large vision language models (LVLMs) have enhanced performance, they often face challenges with nuanced queries that demand both a comprehensive understanding and detailed analysis. To overcome these obstacles, we introduce AVATAAR, a modular and interpretable framework that combines global and local video context, along with a Pre Retrieval Thinking Agent and a Rethink Module. AVATAAR creates a persistent global summary and establishes a feedback loop between the Rethink Module and the Pre Retrieval Thinking Agent, allowing the system to refine its retrieval strategies based on partial answers and replicate human-like iterative reasoning. On the CinePile benchmark, AVATAAR demonstrates significant improvements over a baseline, achieving relative gains of +5.6% in temporal reasoning, +5% in technical queries, +8% in theme-based questions, and +8.2% in narrative comprehension. Our experiments confirm that each module contributes positively to the overall performance, with the feedback loop being crucial for adaptability. These findings highlight AVATAAR's effectiveness in enhancing video understanding capabilities. Ultimately, AVATAAR presents a scalable solution for long-form Video Question Answering (QA), merging accuracy, interpretability, and extensibility.
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