InstanceFormer: An Online Video Instance Segmentation Framework
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Recent transformer-based offline video instance segmentation (VIS) approaches achieve encouraging results and significantly outperform online approaches. However, their reliance on the whole video and the immense computational complexity caused by full Spatio-temporal attention limit them in real-life applications such as processing lengthy videos. In this paper, we propose a single-stage transformer-based efficient online VIS framework named InstanceFormer, which is especially suitable for long and challenging videos. We propose three novel components to model short-term and long-term dependency and temporal coherence. First, we propagate the representation, location, and semantic information of prior instances to model short-term changes. Second, we propose a novel memory cross-attention in the decoder, which allows the network to look into earlier instances within a certain temporal window. Finally, we employ a temporal contrastive loss to impose coherence in the representation of an instance across all frames. Memory attention and temporal coherence are particularly beneficial to long-range dependency modeling, including challenging scenarios like occlusion. The proposed InstanceFormer outperforms previous online benchmark methods by a large margin across multiple datasets. Most importantly, InstanceFormer surpasses offline approaches for challenging and long datasets such as YouTube-VIS-2021 and OVIS. Code is available at https://github.com/rajatkoner08/InstanceFormer.
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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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