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Vlm-eval: A General Evaluation On Video Large Language Models

Li Shuailin, Zhang Yuang, Zhao Yucheng, Wang Qiuyue, Jia Fan, Liu Yingfei, Wang Tiancai. Arxiv 2023

[Paper]    
Fine Tuning GPT Model Architecture Pretraining Methods RAG Tools Training Techniques

Despite the rapid development of video Large Language Models (LLMs), a comprehensive evaluation is still absent. In this paper, we introduce a unified evaluation that encompasses multiple video tasks, including captioning, question and answering, retrieval, and action recognition. In addition to conventional metrics, we showcase how GPT-based evaluation can match human-like performance in assessing response quality across multiple aspects. We propose a simple baseline: Video-LLaVA, which uses a single linear projection and outperforms existing video LLMs. Finally, we evaluate video LLMs beyond academic datasets, which show encouraging recognition and reasoning capabilities in driving scenarios with only hundreds of video-instruction pairs for fine-tuning. We hope our work can serve as a unified evaluation for video LLMs, and help expand more practical scenarios. The evaluation code will be available soon.

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