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Offline-to-Online Knowledge Distillation for Video Instance Segmentation

Title
Offline-to-Online Knowledge Distillation for Video Instance Segmentation
Author(s)
Kim, HojinLee, SeunghunKang, HyeonIm, Sunghoon
Issued Date
2024-01-07
Citation
IEEE/CVF Winter Conference on Applications of Computer Vision (WACV 2024), pp.159 - 168
Type
Conference Paper
ISSN
2472-6737
Abstract
In this paper, we present offline-to-online knowledge distillation (OOKD) for video instance segmentation (VIS), which transfers a wealth of video knowledge from an offline model to an online model for consistent prediction. Unlike previous methods that have adopted either an online or offline model, our single online model takes advantage of both models by distilling offline knowledge. To transfer knowledge correctly, we propose query filtering and association (QFA), which filters irrelevant queries to exact instances. Our KD with QFA increases the robustness of feature matching by encoding object-centric features from a single frame supplemented by long-range global information. We also propose a simple data augmentation scheme for knowledge distillation in the VIS task that fairly transfers the knowledge of all classes into the online model. Extensive experiments show that our method significantly improves the performance in video instance segmentation, especially for challenging datasets, including long, dynamic sequences. Our method also achieves state-of-the-art performance on YTVIS-21, YTVIS-22, and OVIS datasets, with mAP scores of 46.1%, 43.6%, and 31.1%, respectively.
URI
http://hdl.handle.net/20.500.11750/47801
Publisher
IEEE Computer Society, The Computer Vision Foundation
Related Researcher
  • 임성훈 Im, Sunghoon
  • Research Interests Computer Vision; Deep Learning; Robot Vision
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Appears in Collections:
Department of Electrical Engineering and Computer Science Computer Vision Lab. 2. Conference Papers

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