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Progressive Token Length Scaling in Transformer Encoders for Efficient Universal Segmentation

Abstract

A powerful architecture for universal segmentation relies on transformers that encode multi-scale image features and decode object queries into mask predictions. With efficiency being a high priority for scaling such models, we observed that the state-of-the-art method Mask2Former uses 50% of its compute only on the transformer encoder. This is due to the retention of a full-length token-level representation of all backbone feature scales at each encoder layer. With this observation, we propose a strategy termed PROgressive Token Length SCALing for Efficient transformer encoders (PRO-SCALE) that can be plugged-in to the Mask2Former segmentation architecture to significantly reduce the computational cost. The underlying principle of PRO-SCALE is: progressively scale the length of the tokens with the layers of the encoder. This allows PRO-SCALE to reduce computations by a large margin with minimal sacrifice in performance (~52% encoder and ~27% overall GFLOPs reduction with no drop in performance on COCO dataset). Experiments conducted on public benchmarks demonstrates PRO-SCALE's flexibility in architectural configurations, and exhibits potential for extension beyond the settings of segmentation tasks to encompass object detection. Code here:this https URL

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@article{aich2025_2404.14657,
  title={ Progressive Token Length Scaling in Transformer Encoders for Efficient Universal Segmentation },
  author={ Abhishek Aich and Yumin Suh and Samuel Schulter and Manmohan Chandraker },
  journal={arXiv preprint arXiv:2404.14657},
  year={ 2025 }
}
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