CONQUER: Contextual Query-aware Ranking for Video Corpus Moment Retrieval
About
This paper tackles a recently proposed Video Corpus Moment Retrieval task. This task is essential because advanced video retrieval applications should enable users to retrieve a precise moment from a large video corpus. We propose a novel CONtextual QUery-awarE Ranking~(CONQUER) model for effective moment localization and ranking. CONQUER explores query context for multi-modal fusion and representation learning in two different steps. The first step derives fusion weights for the adaptive combination of multi-modal video content. The second step performs bi-directional attention to tightly couple video and query as a single joint representation for moment localization. As query context is fully engaged in video representation learning, from feature fusion to transformation, the resulting feature is user-centered and has a larger capacity in capturing multi-modal signals specific to query. We conduct studies on two datasets, TVR for closed-world TV episodes and DiDeMo for open-world user-generated videos, to investigate the potential advantages of fusing video and query online as a joint representation for moment retrieval.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Video Retrieval | ActivityNet Captions (eval) | R@16.5 | 21 | |
| Video Retrieval | TVR (evaluation) | R@111 | 20 | |
| Video Retrieval | Charades-STA (evaluation) | R@11.8 | 17 | |
| Video Moment Retrieval | TVR | Recall@1 (IoU=0.5)39.02 | 6 |