--- license: mit size_categories: - 1K

Logo CaReBench: A Fine-grained Benchmark for Video Captioning and Retrieval

Yifan Xu, Xinhao Li, Yichun Yang, Desen Meng, Rui Huang, Limin Wang

🤗 Model    |    🤗 Data   |    📑 Paper   

![](assets/comparison.png) ## 📝 Introduction **🌟 CaReBench** is a fine-grained benchmark comprising **1,000 high-quality videos** with detailed human-annotated captions, including **manually separated spatial and temporal descriptions** for independent spatiotemporal bias evaluation. ![CaReBench](assets/carebench.png) **📊 ReBias and CapST Metrics** are designed specifically for retrieval and captioning tasks, providing a comprehensive evaluation framework for spatiotemporal understanding in video-language models. **⚡ CaRe: A Unified Baseline** for fine-grained video retrieval and captioning, achieving competitive performance through **two-stage Supervised Fine-Tuning (SFT)**. CaRe excels in both generating detailed video descriptions and extracting robust video features. ![CaRe Training Recipe](assets/care_model.png) **🚀 State-of-the-art performance** on both detailed video captioning and fine-grained video retrieval. CaRe outperforms CLIP-based retrieval models and popular MLLMs in captioning tasks. ![alt text](assets/performance.png)