The Instance-centric Transformer for the RVOS Track of LSVOS Challenge: 3rd Place Solution
Referring Video Object Segmentation is an emerging multi-modal task that aims to segment objects in the video given a natural language expression. In this work, we build two instance-centric models and fuse predicted results from frame-level and instance-level. First, we introduce instance mask into...
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Zusammenfassung: | Referring Video Object Segmentation is an emerging multi-modal task that aims
to segment objects in the video given a natural language expression. In this
work, we build two instance-centric models and fuse predicted results from
frame-level and instance-level. First, we introduce instance mask into the
DETR-based model for query initialization to achieve temporal enhancement and
employ SAM for spatial refinement. Secondly, we build an instance retrieval
model conducting binary instance mask classification whether the instance is
referred. Finally, we fuse predicted results and our method achieved a score of
52.67 J&F in the validation phase and 60.36 J&F in the test phase, securing the
final ranking of 3rd place in the 6-th LSVOS Challenge RVOS Track. |
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DOI: | 10.48550/arxiv.2408.10541 |