Deconfounded Video Moment Retrieval with Causal Intervention
Xun Yang, Fuli Feng, Wei Ji, Meng Wang, Tat-Seng Chua

TL;DR
This paper introduces a causality-inspired framework for video moment retrieval that removes temporal location biases, significantly improving accuracy and generalization over existing methods.
Contribution
It proposes a novel causal intervention approach to mitigate dataset bias in VMR by disentangling visual content and applying backdoor adjustment.
Findings
Achieves significant accuracy improvements over state-of-the-art methods.
Demonstrates enhanced generalization to unbiased datasets.
Validates the effectiveness of causal intervention in VMR.
Abstract
We tackle the task of video moment retrieval (VMR), which aims to localize a specific moment in a video according to a textual query. Existing methods primarily model the matching relationship between query and moment by complex cross-modal interactions. Despite their effectiveness, current models mostly exploit dataset biases while ignoring the video content, thus leading to poor generalizability. We argue that the issue is caused by the hidden confounder in VMR, {i.e., temporal location of moments}, that spuriously correlates the model input and prediction. How to design robust matching models against the temporal location biases is crucial but, as far as we know, has not been studied yet for VMR. To fill the research gap, we propose a causality-inspired VMR framework that builds structural causal model to capture the true effect of query and video content on the prediction.…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Advanced Image and Video Retrieval Techniques · Video Analysis and Summarization
