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Tracking Instances as Queries

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arxiv 2106.11963 v2 pith:PC4LMFPL submitted 2021-06-22 cs.CV cs.AIcs.MM

Tracking Instances as Queries

classification cs.CV cs.AIcs.MM
keywords instancesqueriesquerysegmentationend-to-endframeworkinstanceresults
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently, query based deep networks catch lots of attention owing to their end-to-end pipeline and competitive results on several fundamental computer vision tasks, such as object detection, semantic segmentation, and instance segmentation. However, how to establish a query based video instance segmentation (VIS) framework with elegant architecture and strong performance remains to be settled. In this paper, we present \textbf{QueryTrack} (i.e., tracking instances as queries), a unified query based VIS framework fully leveraging the intrinsic one-to-one correspondence between instances and queries in QueryInst. The proposed method obtains 52.7 / 52.3 AP on YouTube-VIS-2019 / 2021 datasets, which wins the 2-nd place in the YouTube-VIS Challenge at CVPR 2021 \textbf{with a single online end-to-end model, single scale testing \& modest amount of training data}. We also provide QueryTrack-ResNet-50 baseline results on YouTube-VIS-2021 val set as references for the VIS community.

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