CVCLIRSep 22, 2022

CONE: An Efficient COarse-to-fiNE Alignment Framework for Long Video Temporal Grounding

arXiv:2209.10918v2238 citationsh-index: 58Has Code
Originality Incremental advance
AI Analysis

It addresses the problem of localizing moments in long videos for video analysis applications, presenting an incremental improvement over existing methods.

The paper tackles long video temporal grounding by proposing CONE, a plug-and-play framework that improves performance and efficiency, achieving gains of up to 6.87% on benchmarks and accelerating inference by up to 15x.

This paper tackles an emerging and challenging problem of long video temporal grounding~(VTG) that localizes video moments related to a natural language (NL) query. Compared with short videos, long videos are also highly demanded but less explored, which brings new challenges in higher inference computation cost and weaker multi-modal alignment. To address these challenges, we propose CONE, an efficient COarse-to-fiNE alignment framework. CONE is a plug-and-play framework on top of existing VTG models to handle long videos through a sliding window mechanism. Specifically, CONE (1) introduces a query-guided window selection strategy to speed up inference, and (2) proposes a coarse-to-fine mechanism via a novel incorporation of contrastive learning to enhance multi-modal alignment for long videos. Extensive experiments on two large-scale long VTG benchmarks consistently show both substantial performance gains (e.g., from 3.13% to 6.87% on MAD) and state-of-the-art results. Analyses also reveal higher efficiency as the query-guided window selection mechanism accelerates inference time by 2x on Ego4D-NLQ and 15x on MAD while keeping SOTA results. Codes have been released at https://github.com/houzhijian/CONE.

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