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VTG-GPT: Tuning-Free Zero-Shot Video Temporal Grounding with GPT

Yifang Xu, Yunzhuo Sun, Zien Xie, Benxiang Zhai, Sidan Du

2024Applied Sciences16 citationsDOIOpen Access PDF

Abstract

Video temporal grounding (VTG) aims to locate specific temporal segments from an untrimmed video based on a linguistic query. Most existing VTG models are trained on extensive annotated video-text pairs, a process that not only introduces human biases from the queries but also incurs significant computational costs. To tackle these challenges, we propose VTG-GPT, a GPT-based method for zero-shot VTG without training or fine-tuning. To reduce prejudice in the original query, we employ Baichuan2 to generate debiased queries. To lessen redundant information in videos, we apply MiniGPT-v2 to transform visual content into more precise captions. Finally, we devise the proposal generator and post-processing to produce accurate segments from debiased queries and image captions. Extensive experiments demonstrate that VTG-GPT significantly outperforms SOTA methods in zero-shot settings and surpasses unsupervised approaches. More notably, it achieves competitive performance comparable to supervised methods. The code is available on GitHub.

Topics & Concepts

Shot (pellet)PhysicsComputer scienceControl theory (sociology)Artificial intelligenceChemistryControl (management)Organic chemistryAdvanced Image Processing TechniquesAdvanced Vision and ImagingVideo Analysis and Summarization