ArXiv

Native Active Perception as Reasoning for Omni-Modal Understanding

Authors
Zhenghao Xing, Ruiyang Xu, Yuxuan Wang...
Categories
cs.CV, cs.CL, cs.SD
arXiv
https://arxiv.org/abs/2606.19341v1
PDF
https://arxiv.org/pdf/2606.19341v1

Brief

OmniAgent presents a native omni-modal agent for long-video understanding that replaces watch‑it‑all processing with a POMDP-driven Observation–Thought–Action cycle, selectively extracting audio–visual cues into persistent textual memory. The paper introduces Agentic Supervised Fine‑Tuning (best‑of‑N + dual‑stage QC) and Agentic RL with TAURA (turn‑level entropy based advantage), achieves SOTA on 10 benchmarks and a 7B model beating Qwen2.5‑VL‑72B (50.5% vs 47.3%) on LVBench; accepted at ICML 2026.

Source evidence

Abstract

Passive models for long video understanding typically rely on a "watch-it-all" paradigm, processing frames uniformly regardless of query difficulty, causing computational cost to grow with video duration. Although interactive frameworks have emerged, they often rely on global pre-scanning, and their context cost still scales with video length. We propose OmniAgent, the first native omni-modal agent that formulates video understanding as a POMDP-based iterative Observation-Thought-Action cycle. OmniAgent executes on-demand actions to selectively distill audio-visual cues into a persistent textual memory, effectively decoupling reasoning complexity from raw video duration. To operationalize this, we introduce (1) Agentic Supervised Fine-Tuning to bootstrap native active perception via best-of-N trajectory synthesis with dual-stage quality control, and (2) Agentic Reinforcement Learning with TAURA (Turn-aware Adaptive Uncertainty Rescaled Advantage), which leverages turn-level entropy to steer credit assignment toward pivotal discovery turns. Crucially, OmniAgent exhibits positive test-time scaling, where performance improves as the number of reasoning turns increases, validating the efficacy of active perception. Empirical results across ten benchmarks (e.g., VideoMME, LVBench) demonstrate that OmniAgent achieves state-of-the-art performance among open-source models. Notably, on LVBench, our 7B agent outperforms the 10$\times$ larger Qwen2.5-VL-72B (50.5% vs. 47.3%).

Comment: Accepted at ICML 2026. Code and models: https://github.com/harryhsing/omniagent