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Bridging the Geometry Mismatch: Frequency-Aware Anisotropic Serialization for Thin-Structure SSMs

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The segmentation of thin linear structures is inherently topology allowbreak-critical, where minor local errors can sever long-range connectivity. While recent State-Space Models (SSMs) offer efficient long-range modeling, their isotropic serialization (e.g., raster scanning) creates a geometry mismatch for anisotropic targets, causing state propagation across rather than along the structure trajectories. To address this, we propose FGOS-Net, a framework based on frequency allowbreak-geometric disentanglement. We first decompose features into a stable topology carrier and directional high-frequency bands, leveraging the latter to explicitly correct spatial misalignments induced by downsampling. Building on this calibrated topology, we introduce frequency-aligned scanning that elevates serialization to a geometry-conditioned decision, preserving direction-consistent traces. Coupled with an active probing strategy to selectively inject high-frequency details and suppress texture ambiguity, FGOS-Net consistently outperforms strong baselines across four challenging benchmarks. Notably, it achieves 91.3% mIoU and 97.1% clDice on DeepCrack while running at 80 FPS with only 7.87 GFLOPs.

Jin Bai, Huiyao Zhang, Qi Wen, Ningyang Li, Shengyang Li, Atta ur Rahman, Xiaolin Tian• 2026

Related benchmarks

TaskDatasetResultRank
Crack SegmentationDeepCrack
mIoU91.29
11
Crack SegmentationCRACK500
mIoU79.15
11
Crack SegmentationCrackMap
mIoU80.75
11
Crack SegmentationTUT
mIoU85.73
11
Crack SegmentationEfficiency Analysis Profile 256x256 (test)
Parameters6.26
11
Aerial road extractionMassachusetts Roads
mIoU79.83
4
Retinal Vessel SegmentationCHASEDB1
mIoU80.45
4
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