LGCLCVJul 26, 2024

Wolf: Dense Video Captioning with a World Summarization Framework

arXiv:2407.18908v27 citationsh-index: 32
Originality Incremental advance
AI Analysis

This work addresses video understanding and captioning for applications like autonomous driving and robotics, though it appears incremental as it builds on existing VLMs and methods.

The paper tackles the problem of dense video captioning by proposing Wolf, a world summarization framework that uses a mixture-of-experts approach with Vision Language Models to enhance accuracy, achieving improvements such as 55.6% in quality and 77.4% in similarity over GPT-4V on driving videos.

We propose Wolf, a WOrLd summarization Framework for accurate video captioning. Wolf is an automated captioning framework that adopts a mixture-of-experts approach, leveraging complementary strengths of Vision Language Models (VLMs). By utilizing both image and video models, our framework captures different levels of information and summarizes them efficiently. Our approach can be applied to enhance video understanding, auto-labeling, and captioning. To evaluate caption quality, we introduce CapScore, an LLM-based metric to assess the similarity and quality of generated captions compared to the ground truth captions. We further build four human-annotated datasets in three domains: autonomous driving, general scenes, and robotics, to facilitate comprehensive comparisons. We show that Wolf achieves superior captioning performance compared to state-of-the-art approaches from the research community (VILA1.5, CogAgent) and commercial solutions (Gemini-Pro-1.5, GPT-4V). For instance, in comparison with GPT-4V, Wolf improves CapScore both quality-wise by 55.6% and similarity-wise by 77.4% on challenging driving videos. Finally, we establish a benchmark for video captioning and introduce a leaderboard, aiming to accelerate advancements in video understanding, captioning, and data alignment. Webpage: https://wolfv0.github.io/.

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