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Detours for Navigating Instructional Videos

About

We introduce the video detours problem for navigating instructional videos. Given a source video and a natural language query asking to alter the how-to video's current path of execution in a certain way, the goal is to find a related ''detour video'' that satisfies the requested alteration. To address this challenge, we propose VidDetours, a novel video-language approach that learns to retrieve the targeted temporal segments from a large repository of how-to's using video-and-text conditioned queries. Furthermore, we devise a language-based pipeline that exploits how-to video narration text to create weakly supervised training data. We demonstrate our idea applied to the domain of how-to cooking videos, where a user can detour from their current recipe to find steps with alternate ingredients, tools, and techniques. Validating on a ground truth annotated dataset of 16K samples, we show our model's significant improvements over best available methods for video retrieval and question answering, with recall rates exceeding the state of the art by 35%.

Kumar Ashutosh, Zihui Xue, Tushar Nagarajan, Kristen Grauman• 2024

Related benchmarks

TaskDatasetResultRank
Detour video retrievalDetours (test)
R@517.6
10
Detour window localizationDetours (test)
R@1 (IoU 0.3)16.7
9
Video demonstration retrievalCOIN CT Woodworking (test)
Mean Rank31
6
Video demonstration retrievalSaD-MC Woodworking (test)
MR30
6
Video demonstration retrievalSaD-MC Gardening (test)
Mean Rank34
6
Video demonstration retrievalCOIN CT (Gardening) (test)
MR (Mean Rank)40
6
Video demonstration retrievalSaD-MC Cooking (test)
MR124
6
Video demonstration retrievalCOIN CT (Cooking) (test)
MR37
6
Video demonstration retrievalSaD-VD Cooking (test)
MR80
6
Video demonstration retrievalHT-Step Cooking (test)
Mean Rank (MR)125
6
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