CVNov 1, 2025

CueBench: Advancing Unified Understanding of Context-Aware Video Anomalies in Real-World

arXiv:2511.00613v11 citationsh-index: 13
Originality Incremental advance
AI Analysis

This addresses the need for better evaluation of video anomaly understanding in real-world contexts, though it appears incremental as it builds on existing benchmark and VLM approaches.

The paper tackles the problem of limited real-world video anomaly understanding by introducing CueBench, a comprehensive benchmark with hierarchical taxonomy and multiple challenging tasks, and shows their Cue-R1 method surpasses state-of-the-art approaches by over 24% on average.

How far are deep models from real-world video anomaly understanding (VAU)? Current works typically emphasize on detecting unexpected occurrences deviated from normal patterns or comprehending anomalous events with interpretable descriptions. However, they exhibit only a superficial comprehension of real-world anomalies, with limited breadth in complex principles and subtle context that distinguish the anomalies from normalities, e.g., climbing cliffs with safety gear vs. without it. To this end, we introduce CueBench, the first of its kind Benchmark, devoted to Context-aware video anomalies within a Unified Evaluation framework. We comprehensively establish an event-centric hierarchical taxonomy that anchors two core event types: 14 conditional and 18 absolute anomaly events, defined by their refined semantics from diverse contexts across 174 scenes and 198 attributes. Based on this, we propose to unify and benchmark context-aware VAU with various challenging tasks across recognition, temporal grounding, detection, and anticipation. This also serves as a rigorous and fair probing evaluation suite for generative-discriminative as well as generalized-specialized vision-language models (VLMs). To address the challenges underlying CueBench, we further develop Cue-R1 based on R1-style reinforcement fine-tuning with verifiable, task-aligned, and hierarchy-refined rewards in a unified generative manner. Extensive results on CueBench reveal that, existing VLMs are still far from satisfactory real-world anomaly understanding, while our Cue-R1 surpasses these state-of-the-art approaches by over 24% on average.

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