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Papers/Temporally Efficient Vision Transformer for Video Instance...

Temporally Efficient Vision Transformer for Video Instance Segmentation

Shusheng Yang, Xinggang Wang, Yu Li, Yuxin Fang, Jiemin Fang, Wenyu Liu, Xun Zhao, Ying Shan

2022-04-18CVPR 2022 1Semantic SegmentationInstance SegmentationVideo Instance Segmentation
PaperPDFCodeCodeCode(official)

Abstract

Recently vision transformer has achieved tremendous success on image-level visual recognition tasks. To effectively and efficiently model the crucial temporal information within a video clip, we propose a Temporally Efficient Vision Transformer (TeViT) for video instance segmentation (VIS). Different from previous transformer-based VIS methods, TeViT is nearly convolution-free, which contains a transformer backbone and a query-based video instance segmentation head. In the backbone stage, we propose a nearly parameter-free messenger shift mechanism for early temporal context fusion. In the head stages, we propose a parameter-shared spatiotemporal query interaction mechanism to build the one-to-one correspondence between video instances and queries. Thus, TeViT fully utilizes both framelevel and instance-level temporal context information and obtains strong temporal modeling capacity with negligible extra computational cost. On three widely adopted VIS benchmarks, i.e., YouTube-VIS-2019, YouTube-VIS-2021, and OVIS, TeViT obtains state-of-the-art results and maintains high inference speed, e.g., 46.6 AP with 68.9 FPS on YouTube-VIS-2019. Code is available at https://github.com/hustvl/TeViT.

Results

TaskDatasetMetricValueModel
Video Instance SegmentationOVIS validationAP5034.9TeViT (ResNet-50)
Video Instance SegmentationOVIS validationAP7515TeViT (ResNet-50)
Video Instance SegmentationOVIS validationmask AP17.4TeViT (ResNet-50)

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