Which Viewpoint Shows it Best? Language for Weakly Supervising View Selection in Multi-view Instructional Videos
Sagnik Majumder, Tushar Nagarajan, Ziad Al-Halah, Reina Pradhan,, Kristen Grauman

TL;DR
This paper introduces LangView, a weakly supervised framework that identifies the most informative viewpoint in multi-view instructional videos using language cues, outperforming existing methods without requiring explicit view supervision.
Contribution
We propose a novel weakly supervised approach that leverages language to predict the most informative view in multi-view videos, eliminating the need for costly view annotations.
Findings
Outperforms state-of-the-art baselines on two datasets
Uses language to effectively identify best viewpoints
Achieves higher accuracy with human evaluation support
Abstract
Given a multi-view video, which viewpoint is most informative for a human observer? Existing methods rely on heuristics or expensive "best-view" supervision to answer this question, limiting their applicability. We propose a weakly supervised approach that leverages language accompanying an instructional multi-view video as a means to recover its most informative viewpoint(s). Our key hypothesis is that the more accurately an individual view can predict a view-agnostic text summary, the more informative it is. To put this into action, we propose LangView, a framework that uses the relative accuracy of view-dependent caption predictions as a proxy for best view pseudo-labels. Then, those pseudo-labels are used to train a view selector, together with an auxiliary camera pose predictor that enhances view-sensitivity. During inference, our model takes as input only a multi-view video--no…
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Taxonomy
TopicsVideo Analysis and Summarization
