TL;DR
This paper introduces a novel single-stage reasoning approach for video multimodal LLMs that explicitly references relevant frames, improving accuracy and temporal grounding without auxiliary modules.
Contribution
It presents the first unified, self-contained video LLM with frame-aware reasoning trained on a new large dataset, COF-DATA, enhancing performance across benchmarks.
Findings
Single-stage reasoning reduces temporal inconsistencies.
Synthetic data significantly boosts model accuracy.
Models accurately identify key frames for answering questions.
Abstract
Recent work has shown that eliciting Large Language Models (LLMs) to generate reasoning traces in natural language before answering the user's request can significantly improve their performance across tasks. This approach has been extended to multimodal LLMs, where the models can produce chains-of-thoughts (CoT) about the content of input images and videos. For video inputs, prior works use complex multi-step pipelines that extract and include relevant frames from videos in the CoT, or produce simpler single-stage reasoning traces at the expense of poor temporal grounding. Here, we propose the first video LLMs with single-stage reasoning that includes explicit references to relevant frames, thereby reducing temporal inconsistencies in the reasoning process. Our approach is simple, unified, and self-contained, employing a single-stage inference to handle complex video understanding…
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