Structure-Aware Consistency Priors for Shape from Polarization in Complex Media
About
Recovering surface normals from single view polarization images in complex media remains challenging. This paper focuses on ice as a representative complex medium, where intricate light matter interactions lead to a nonlinear mapping between polarization observations and surface normals. To address this, a structure-aware polarization prior based on autocorrelation functions is proposed to capture the local spatial consistency of AoLP. Building on this, a dual-branch network (IceSfP) is designed to integrate raw polarization features with priors via cross modal attention and multi-scale feature fusion, enabling accurate surface normal estimation under complex media conditions. To evaluate the method, the first real-world ice SfP dataset is constructed. Experimental results show that the method outperforms existing approaches across all metrics, achieving a MAE of 16.01 deg, which is 2.74 deg lower than the second-best method. The framework provides a generalizable solution for high-precision geometric perception in complex media.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Surface Normal Estimation | DeepSfP (test) | Mean Angular Error (MAE)16.33 | 11 | |
| Normal estimation | IceSfP (average) | MAE16.01 | 6 | |
| Surface Normal Estimation | TransSfP (test) | MAE (degrees)15.59 | 6 |