Pause and Think: A Dataset and Benchmark for Video-Grounded Assistive Action Suggestion
About
Recent Vision-Language Models (VLMs) struggle with grounded reasoning, temporal consistency, and context aware planning in videos. We introduce pause-and-think-T, a reasoning-centric training dataset that encourages models to pause, reason over visual evidence, and produce concise, actionable responses. The dataset promotes structured reasoning prior to answer generation, guiding models toward human-like, scene-grounded assistance. We fine-tune a compact 4B-parameter model and evaluate it on our pause-and-think-B benchmark targeting contextual understanding and goal planning tasks. The model achieves 58.0% accuracy at 59x fewer parameters than Qwen3-VL-235B (58.9%), matching GPT-5.2 on scene understanding and surpassing GPT-4o. Beyond our benchmark, it also shows strong out-of-distribution performance on EgoThink and TempCompass, with substantial gains in affordance, assistance, attribution recognition, situated reasoning, and temporal order, without benchmark-specific training. Our results indicate that targeted reasoning supervision enables compact models to deliver actionable, visually grounded guidance while generalizing beyond training data, without requiring large-scale model expansion.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video-grounded understanding and actionable reasoning | Pause-and-think-B 1.0 (test) | Overall Score58 | 20 | |
| Video Question Answering | TempCompass MC | Accuracy72 | 5 | |
| Video Question Answering | EgoThink | Affordance Score65 | 5 | |
| Helpfulness evaluation | Pause-and-think B | Conciseness80.6 | 3 |