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Learning Temporal Sentence Grounding From Narrated EgoVideos

About

The onset of long-form egocentric datasets such as Ego4D and EPIC-Kitchens presents a new challenge for the task of Temporal Sentence Grounding (TSG). Compared to traditional benchmarks on which this task is evaluated, these datasets offer finer-grained sentences to ground in notably longer videos. In this paper, we develop an approach for learning to ground sentences in these datasets using only narrations and their corresponding rough narration timestamps. We propose to artificially merge clips to train for temporal grounding in a contrastive manner using text-conditioning attention. This Clip Merging (CliMer) approach is shown to be effective when compared with a high performing TSG method -- e.g. mean R@1 improves from 3.9 to 5.7 on Ego4D and from 10.7 to 13.0 on EPIC-Kitchens. Code and data splits available from: https://github.com/keflanagan/CliMer

Kevin Flanagan, Dima Damen, Michael Wray• 2023

Related benchmarks

TaskDatasetResultRank
Temporal GroundingEgo-Exo4D E views
Recall@117
10
Temporal GroundingEgo-Exo4D M views
Recall@114
10
Temporal GroundingEgo-Exo4D D views
Recall@12
5
Temporal GroundingEPFL D views
Recall@112
5
Temporal GroundingLEMMA D views
Recall@19
4
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