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RTFDNet: ロバストなRGB-Tセグメンテーションのための融合-分離手法

arXiv cs.CV / 2026/3/11

Models & Research

要点

  • RTFDNetは、低照度や暗所環境下でのロボットシステムに不可欠なロバストなRGB-T(RGB-サーマル)セマンティックセグメンテーションのために設計された新規の3ブランチエンコーダ-デコーダモデルです。
  • モデルはSynergistic Feature Fusion、Cross-Modal Decouple Regularization、およびRegion Decouple Regularizationを通じてRGBとサーマルのモダリティの融合と分離を統一し、ロバスト性と一貫性を向上させます。
  • RTFDNetはモダリティ特有の特徴を効率的に分離しつつ融合表現を維持し、単独推論時にも性能低下なく動作可能です。
  • 多数の実験により、RTFDNetは異なるモダリティ条件下でも優れた性能を発揮し、部分的なセンサー信号喪失に対する耐性を示しています。
  • 著者らはさらなる研究促進のために実装コードを公開しており、RGB-Tセグメンテーションタスクにおける普及と革新を支援します。

Computer Science > Computer Vision and Pattern Recognition

arXiv:2603.09149 (cs)
[Submitted on 10 Mar 2026]

Title:RTFDNet: Fusion-Decoupling for Robust RGB-T Segmentation

View a PDF of the paper titled RTFDNet: Fusion-Decoupling for Robust RGB-T Segmentation, by Kunyu Tan and Mingjian Liang
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Abstract:RGB-Thermal (RGB-T) semantic segmentation is essential for robotic systems operating in low-light or dark environments. However, traditional approaches often overemphasize modality balance, resulting in limited robustness and severe performance degradation when sensor signals are partially missing. Recent advances such as cross-modal knowledge distillation and modality-adaptive fine-tuning attempt to enhance cross-modal interaction, but they typically decouple modality fusion and modality adaptation, requiring multi-stage training with frozen models or teacher-student frameworks. We present RTFDNet, a three-branch encoder-decoder that unifies fusion and decoupling for robust RGB-T segmentation. Synergistic Feature Fusion (SFF) performs channel-wise gated exchange and lightweight spatial attention to inject complementary cues. Cross-Modal Decouple Regularization (CMDR) isolates modality-specific components from the fused representation and supervises unimodal decoders via stop-gradient targets. Region Decouple Regularization (RDR) enforces class-selective prediction consistency in confident regions while blocking gradients to the fusion branch. This feedback loop strengthens unimodal paths without degrading the fused stream, enabling efficient standalone inference at test time. Extensive experiments demonstrate the effectiveness of RTFDNet, showing consistent performance across varying modality conditions. Our implementation will be released to facilitate further research. Our source code are publicly available at this https URL.
Subjects: Computer Vision and Pattern Recognition (cs.CV)
Cite as: arXiv:2603.09149 [cs.CV]
  (or arXiv:2603.09149v1 [cs.CV] for this version)
  https://doi.org/10.48550/arXiv.2603.09149
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arXiv-issued DOI via DataCite

Submission history

From: MingJian Liang [view email]
[v1] Tue, 10 Mar 2026 03:40:26 UTC (897 KB)
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