SeqFormer: Sequential Transformer for Video Instance Segmentation
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In this work, we present SeqFormer for video instance segmentation. SeqFormer follows the principle of vision transformer that models instance relationships among video frames. Nevertheless, we observe that a stand-alone instance query suffices for capturing a time sequence of instances in a video, but attention mechanisms shall be done with each frame independently. To achieve this, SeqFormer locates an instance in each frame and aggregates temporal information to learn a powerful representation of a video-level instance, which is used to predict the mask sequences on each frame dynamically. Instance tracking is achieved naturally without tracking branches or post-processing. On YouTube-VIS, SeqFormer achieves 47.4 AP with a ResNet-50 backbone and 49.0 AP with a ResNet-101 backbone without bells and whistles. Such achievement significantly exceeds the previous state-of-the-art performance by 4.6 and 4.4, respectively. In addition, integrated with the recently-proposed Swin transformer, SeqFormer achieves a much higher AP of 59.3. We hope SeqFormer could be a strong baseline that fosters future research in video instance segmentation, and in the meantime, advances this field with a more robust, accurate, neat model. The code is available at https://github.com/wjf5203/SeqFormer.
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Cited by 2 Pith papers
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SA-VIS: Sparse frame Annotations for training Video Instance Segmentation
SA-VIS trains video instance segmentation models on sparse frame annotations via a Past-frames Feature Propagation module and frame-specific instance queries, showing only a 0.4% AP drop versus dense training on YouTu...
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SA-VIS: Sparse frame Annotations for training Video Instance Segmentation
SA-VIS uses Past-frames Feature Propagation and lightweight instance queries to achieve only a 0.4% performance drop in video instance segmentation when trained on 1/5 of the usual frame annotations.
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