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RD-ViT: Recurrent-Depth Vision Transformer for Semantic Segmentation with Reduced Data Dependence Extending the Recurrent-Depth Transformer Architecture to Dense Prediction

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Published in:ArXiv cs.CV Recent Papers
Format: Online Article RSS Article
Published: 2026
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spellingShingle RD-ViT: Recurrent-Depth Vision Transformer for Semantic Segmentation with Reduced Data Dependence Extending the Recurrent-Depth Transformer Architecture to Dense Prediction
ArXiv cs.CV Recent Papers
Civil & Construction
Engineering & Technology
sub_discipline_display Civil & Construction
sub_discipline_facet Civil & Construction
subject_display ArXiv cs.CV Recent Papers
Civil & Construction
Engineering & Technology
ArXiv cs.CV Recent Papers
Civil & Construction
Engineering & Technology
subject_facet ArXiv cs.CV Recent Papers
Civil & Construction
Engineering & Technology
title RD-ViT: Recurrent-Depth Vision Transformer for Semantic Segmentation with Reduced Data Dependence Extending the Recurrent-Depth Transformer Architecture to Dense Prediction
title_auth RD-ViT: Recurrent-Depth Vision Transformer for Semantic Segmentation with Reduced Data Dependence Extending the Recurrent-Depth Transformer Architecture to Dense Prediction
title_full RD-ViT: Recurrent-Depth Vision Transformer for Semantic Segmentation with Reduced Data Dependence Extending the Recurrent-Depth Transformer Architecture to Dense Prediction
title_fullStr RD-ViT: Recurrent-Depth Vision Transformer for Semantic Segmentation with Reduced Data Dependence Extending the Recurrent-Depth Transformer Architecture to Dense Prediction
title_full_unstemmed RD-ViT: Recurrent-Depth Vision Transformer for Semantic Segmentation with Reduced Data Dependence Extending the Recurrent-Depth Transformer Architecture to Dense Prediction
title_short RD-ViT: Recurrent-Depth Vision Transformer for Semantic Segmentation with Reduced Data Dependence Extending the Recurrent-Depth Transformer Architecture to Dense Prediction
title_sort rd-vit: recurrent-depth vision transformer for semantic segmentation with reduced data dependence extending the recurrent-depth transformer architecture to dense prediction
topic ArXiv cs.CV Recent Papers
Civil & Construction
Engineering & Technology
url https://arxiv.org/abs/2605.03999v1