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CONQUER_RVMR

This repository contains the XML model for the baseline of the Ranked Video Moment Retrieval (RVMR) task. The associated paper is titled "Video Moment Retrieval in Practical Setting: A Dataset of Ranked Moments for Imprecise Queries."

The main repository of the paper is TVR-Ranking, and this model is adapted from CONQUER. The environment setup is the same as for RelocNet_RVMR, as detailed in the TVR-Ranking repository.

CONQUER leverages video retrieval results from HERO. We continue to use these results when training on our TVR-Ranking dataset. Note that, because the HERO results are obtained from the TVR dataset, there could be a data leak issue in our task setting. However, this issue is negligible for two reasons: (i) the queries used in our setting is imprecise query with query re-written, and (ii) a query has multiple ground truth moments in our task setting, which was not annotated in the original TVR dataset.

Performance

Model Train Set Top N IoU=0.3 IoU=0.5 IoU=0.7
Val Test Val Test Val Test
NDCG@10
CONQUER 1 0.0999 0.0859 0.0844 0.0709 0.0530 0.0512
CONQUER 20 0.2406 0.2249 0.2222 0.2104 0.1672 0.1517
CONQUER 40 0.2450 0.2219 0.2262 0.2085 0.1670 0.1515
NDCG@20
CONQUER 1 0.0952 0.0835 0.0808 0.0687 0.0526 0.0484
CONQUER 20 0.2130 0.1995 0.1976 0.1867 0.1527 0.1368
CONQUER 40 0.2183 0.1968 0.2022 0.1851 0.1524 0.1365
NDCG@40
CONQUER 1 0.0974 0.0866 0.0832 0.0718 0.0557 0.0510
CONQUER 20 0.2029 0.1906 0.1891 0.1788 0.1476 0.1326
CONQUER 40 0.2080 0.1885 0.1934 0.1775 0.1473 0.1323

Quick Start

Modify the path in run_disjoint_top20.sh and then execute the script:

sh run_disjoint_top20.sh

Feel free to contribute or raise issues for any problems encountered.

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Dataset used to train LiangRenjie/CONQUER_RVMR