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Updated: May 6, 2026

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AutoMamba: Efficient Autonomous Driving Segmentation Model with Mamba.

Haoran Sun1, Zhensong Li1, Shiliang Zhu2

  • 1School of Information and Communication Engineering, The Center for Target Cognition Information Processing Science and Technology, Beijing Information Science and Technology University, Beijing 102206, China.

Sensors (Basel, Switzerland)
|April 14, 2026
PubMed
Summary
This summary is machine-generated.

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AutoMamba, a novel Hybrid-SSM architecture, enhances semantic segmentation for autonomous driving by efficiently processing high-resolution data. It achieves superior performance and scalability compared to Transformers, addressing limitations of existing State Space Models.

Area of Science:

  • Computer Vision
  • Artificial Intelligence
  • Deep Learning Architectures

Background:

  • Semantic segmentation for autonomous driving requires balancing high-fidelity perception with real-time performance.
  • Transformers offer state-of-the-art results but face quadratic complexity issues with high-resolution images.
  • State Space Models (SSMs) like Mamba provide linear complexity but struggle with local detail loss and inefficient scanning.

Purpose of the Study:

  • To introduce AutoMamba, a Hybrid-SSM architecture designed for efficient and accurate semantic segmentation in autonomous driving.
  • To address the limitations of existing Transformers and SSMs in processing high-resolution data and capturing local details.

Main Methods:

  • Developed a Hybrid-SSM block integrating Depthwise Convolutions for local spatial priors.
Keywords:
autonomous drivinglinear complexitymambareal-time perceptionsemantic segmentationstate space models (SSM)

Related Experiment Videos

Last Updated: May 6, 2026

Swin-PSAxialNet: An Efficient Multi-Organ Segmentation Technique
04:48

Swin-PSAxialNet: An Efficient Multi-Organ Segmentation Technique

Published on: July 5, 2024

886
  • Implemented a Stage-Adaptive Mixed-Scanning strategy prioritizing horizontal context and selectively using vertical scanning.
  • Incorporated Auxiliary Supervision and Online Hard Example Mining (OHEM) to mitigate 'long-tail forgetting' in Mamba architectures.
  • Main Results:

    • AutoMamba demonstrated superior performance on Cityscapes and BDD100K datasets in a training-from-scratch setting.
    • AutoMamba-B0 achieved 67.79% mIoU on Cityscapes with 31.3% fewer FLOPs than SegFormer-B0.
    • AutoMamba-B2 efficiently scaled to 2048x2048 resolution, unlike SegFormer-B2 which encountered Out-Of-Memory errors.

    Conclusions:

    • AutoMamba offers a compelling alternative for high-resolution semantic segmentation in autonomous driving.
    • The proposed architecture effectively balances perception fidelity with computational efficiency.
    • AutoMamba's linear complexity advantage positions it for next-generation perception systems.