CrossMicroNet: a cross-scale small-sample image restoration framework for two-dimensional material microscopy imaging

Abstract

High-quality microscopy is central to resolving the growth behavior, morphology, lattice organization and defect landscape of two-dimensional (2D) materials. Yet microscopy data acquired across scales are degraded by fundamentally different mechanisms: in situ optical microscopy (OM) is often compromised by motion blur, defocus, vibration-induced smearing and illumination inhomogeneity, whereas scanning transmission electron microscopy (STEM) is strongly affected by beam-induced amorphous carbon contamination. Here we introduce CrossMicroNet, a unified cross-scale image-clarification framework that couples a shared restoration front end with modality-adaptive refinement. The restoration module integrates contrast-limited adaptive histogram equalization, mild non-local means denoising, blind deconvolution, ringing suppression and wavelet-domain spatial-channel enhancement. For OM, this front end directly sharpens domain boundaries from small-sample data without requiring paired optical ground truth. For STEM, the restored output is further processed by a lightweight contamination-suppression branch that combines conservative structural guidance with smooth fusion to attenuate diffuse background haze while preserving lattice periodicity. Evaluated on 28 OM/SEM region pairs, where SEM serves only as an approximate structural reference, CrossMicroNet reduces the apparent edge-transition width to 0.22 μm and yields the most favorable overall trade-off among NIQE, LPIPS and PSNR-like structural-reference metrics. On the STEM benchmark, it achieves the best learning-based performance, with a PSNR of 20.50 dB, SSIM of 0.85, LPIPS of 0.08, VIF of 0.92 and FSIM of 0.93. Fourier-domain analysis further confirms suppression of low-frequency contamination while retaining lattice-frequency features. These results establish CrossMicroNet as a practical cross-scale clarification strategy for linking growth-scale OM with atomic-scale STEM in 2D-material research.

Graphical abstract: CrossMicroNet: a cross-scale small-sample image restoration framework for two-dimensional material microscopy imaging

Supplementary files

Article information

Article type
Paper
Submitted
29 Apr 2026
Accepted
17 May 2026
First published
27 May 2026

Nanoscale, 2026, Advance Article

CrossMicroNet: a cross-scale small-sample image restoration framework for two-dimensional material microscopy imaging

M. Feng, X. Zou, L. Liu, S. Wu, H. Zhang, S. Chen, Z. Zeng, Y. Wang, X. Zhang, X. Zhang, T. Li and N. Zou, Nanoscale, 2026, Advance Article , DOI: 10.1039/D6NR01702A

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