Bridging the Geometry Mismatch: Frequency-Aware Anisotropic Serialization for Thin-Structure SSMs
About
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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Crack Segmentation | DeepCrack | mIoU91.29 | 11 | |
| Crack Segmentation | CRACK500 | mIoU79.15 | 11 | |
| Crack Segmentation | CrackMap | mIoU80.75 | 11 | |
| Crack Segmentation | TUT | mIoU85.73 | 11 | |
| Crack Segmentation | Efficiency Analysis Profile 256x256 (test) | Parameters6.26 | 11 | |
| Aerial road extraction | Massachusetts Roads | mIoU79.83 | 4 | |
| Retinal Vessel Segmentation | CHASEDB1 | mIoU80.45 | 4 |