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Weakly-Supervised Multi-Level Attentional Reconstruction Network for Grounding Textual Queries in Videos
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Weakly-Supervised Multi-Level Attentional Reconstruction Network for Grounding Textual Queries in Videos
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The task of temporally grounding textual queries in videos is to localize one video segment that semantically corresponds to the given query. Most of the existing approaches rely on segment-sentence pairs (temporal annotations) for training, which are usually unavailable in real-world scenarios. In this work we present an effective weakly-supervised model, named as Multi-Level Attentional Reconstruction Network (MARN), which only relies on video-sentence pairs during the training stage. The proposed method leverages the idea of attentional reconstruction and directly scores the candidate segments with the learnt proposal-level attentions. Moreover, another branch learning clip-level attention is exploited to refine the proposals at both the training and testing stage. We develop a novel proposal sampling mechanism to leverage intra-proposal information for learning better proposal representation and adopt 2D convolution to exploit inter-proposal clues for learning reliable attention map. Experiments on Charades-STA and ActivityNet-Captions datasets demonstrate the superiority of our MARN over the existing weakly-supervised methods.
Forward citations
Cited by 3 Pith papers
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Not All Inputs Are Valid: Towards Open-Set Video Moment Retrieval Using Language
OpenVMR uses normalizing flow to detect out-of-distribution queries and performs moment retrieval only on in-distribution queries.
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Rethinking Weakly-supervised Video Temporal Grounding From a Game Perspective
Models frames and words as cooperative game players to value uncertain vision-language correspondences for proposal-free moment localization, reporting superior results on Charades-STA and ActivityNet Caption.
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Multi-proposal Collaboration and Multi-task Training for Weakly-supervised Video Moment Retrieval
MCMT improves weakly-supervised VMR by fusing multiple learnable Gaussian masks from proposals into a positive sample mask and using dual masked query reconstruction tasks for stability.
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