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Structured Video Tokens @ Ego4D PNR Temporal Localization Challenge 2022

Authors :
Ben-Avraham, Elad
Herzig, Roei
Mangalam, Karttikeya
Bar, Amir
Rohrbach, Anna
Karlinsky, Leonid
Darrell, Trevor
Globerson, Amir
Publication Year :
2022

Abstract

This technical report describes the SViT approach for the Ego4D Point of No Return (PNR) Temporal Localization Challenge. We propose a learning framework StructureViT (SViT for short), which demonstrates how utilizing the structure of a small number of images only available during training can improve a video model. SViT relies on two key insights. First, as both images and videos contain structured information, we enrich a transformer model with a set of \emph{object tokens} that can be used across images and videos. Second, the scene representations of individual frames in video should "align" with those of still images. This is achieved via a "Frame-Clip Consistency" loss, which ensures the flow of structured information between images and videos. SViT obtains strong performance on the challenge test set with 0.656 absolute temporal localization error.<br />Comment: Ego4D CVPR22 Object State Localization challenge. arXiv admin note: substantial text overlap with arXiv:2206.06346

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2206.07689
Document Type :
Working Paper