Tube-Link: A Flexible Cross Tube Framework for Universal Video Segmentation

Video segmentation aims to segment and track every pixel in diverse scenarios accurately. In this paper, we present Tube-Link, a versatile framework that addresses multiple core tasks of video segmentation with a unified architecture. Our framework is a near-online approach that takes a short subclip as input and outputs the corresponding spatial-temporal tube masks. To enhance the modeling of cross-tube relationships, we propose an effective way to perform tube-level linking via attention along the queries. In addition, we introduce temporal contrastive learning to instance-wise discriminative features for tube-level association. Our approach offers flexibility and efficiency for both short and long video inputs, as the length of each subclip can be varied according to the needs of datasets or scenarios. Tube-Link outperforms existing specialized architectures by a significant margin on five video segmentation datasets. Specifically, it achieves almost 13% relative improvements on VIPSeg and 4% improvements on KITTI-STEP over the strong baseline Video K-Net. When using a ResNet50 backbone on Youtube-VIS-2019 and 2021, Tube-Link boosts IDOL by 3% and 4%, respectively.

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Video Panoptic Segmentation KITTI-STEP Tube-Link(Swin-base) STQ 72.0 # 3
AQ 69.0 # 5
SQ 74.0 # 2
Video Instance Segmentation OVIS validation Tube-Link(ResNet-50) mask AP 29.5 # 29
AP50 51.5 # 27
AP75 30.2 # 27
AR1 15.5 # 21
AR10 34.5 # 22
Video Panoptic Segmentation VIPSeg Tube-Link(Swin-base) VPQ 50.4 # 6
STQ 49.4 # 6
Video Semantic Segmentation VSPW Tube-Link(Swin-large) mIoU 59.6 # 3
Video Instance Segmentation YouTube-VIS 2021 Tube-Link(Swin-L) mask AP 58.4 # 9
AP50 79.4 # 12
AP75 64.3 # 9
AR10 63.6 # 9
AR1 47.5 # 10
Video Instance Segmentation YouTube-VIS validation Tube-Link(Swin-L) mask AP 64.6 # 7
AP50 86.6 # 9
AP75 71.3 # 7
AR1 55.9 # 7
AR10 69.1 # 6

Methods