RCL-Mamba: A Dual-domain State Space Model for Measurement-oriented Image Restoration in Rotational Sparse-View Scanning Computed Laminography
Pith reviewed 2026-07-01 05:50 UTC · model grok-4.3
The pith
RCL-Mamba corrects rotational blur in projections and sparse artifacts in images via a dual-domain state space model, enabling 8-fold fewer views for equivalent structural fidelity in laminography.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
RCL-Mamba is a dual-domain SSM-based restoration network that uses cascaded joint processing to correct rotational blur in the projection domain before suppressing sparse artifacts in the image domain, with a Mamba-CNN dual-branch module to adaptively balance large-scale correction and local recovery, outperforming baselines on blur removal, artifact suppression, and structural preservation while allowing an 8-fold reduction in scanning views from 512 to 64 without quality loss.
What carries the argument
The cascaded dual-domain processing strategy with the Mamba-CNN dual-branch module inside the state space model framework, which sequentially handles projection-domain blur correction followed by image-domain artifact suppression.
Load-bearing premise
Sequentially correcting rotational blur in the projection domain and then suppressing sparse artifacts in the image domain is sufficient to handle the degradations without introducing new errors or losing critical structural information.
What would settle it
Direct side-by-side line profile comparisons on real PCB RCL scans where 64-view RCL-Mamba outputs deviate from 512-view ground truth measurements of via diameters or trace widths beyond acceptable tolerances would falsify the no-compromise claim.
read the original abstract
Rotational Scanning Computed Laminography (RCL) is widely utilized for the Non-Destructive Testing(NDT) of large planar components. However, to facilitate rapid inspection, continuous sparse-view scanning is often employed, where the angular integration effect during exposure induces rotational blur in the projection domain. Furthermore, the data incompleteness inherent in sparse sampling manifests as sparse artifacts in the reconstructed image domain. To address these cross-domain degradations, this paper proposes RCL-Mamba, a measurement-oriented dual-domain State Space Model (SSM)-based image restoration network. The framework adopts a cascaded joint processing strategy: it first corrects the rotational blur in the projection domain and subsequently suppresses the sparse artifacts in the image domain. Additionally, we design a Mamba-CNN dual-branch module to adaptively balance large-scale blur correction with local detail recovery. Evaluations on both simulated datasets and real-world Printed Circuit Board (PCB) scans demonstrate that RCL-Mamba outperforms existing baselines in blur removal, artifact suppression, and structural preservation. Line-profile-based structural measurement further verifies that the proposed method better preserves via/pad boundaries and slender trace profiles. Crucially, by reducing the required scanning views from 512 to 64, our method enhances inspection efficiency by approximately 8-fold without compromising reconstruction quality, offering a robust measurement-oriented restoration solution for high-throughput RCL inspection with improved structural measurement fidelity.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript proposes RCL-Mamba, a dual-domain state space model (SSM) network for measurement-oriented image restoration in rotational sparse-view computed laminography (RCL). It employs a cascaded strategy that first corrects rotational blur in the projection domain and then suppresses sparse-view artifacts in the image domain, using a Mamba-CNN dual-branch module for adaptive large-scale and local processing. On simulated data and real PCB scans, it reports outperformance over baselines in blur removal, artifact suppression, and structural preservation (via line-profile measurements of via/pad boundaries and traces), enabling an 8-fold reduction in views (512 to 64) without quality loss for high-throughput NDT inspection.
Significance. If the empirical results hold under rigorous validation, the work offers a practical advance for efficient RCL-based NDT of large planar components such as PCBs. The dual-domain SSM approach and explicit focus on structural measurement fidelity (rather than generic image quality) address a real industrial need for reduced scan time while preserving metrological utility.
major comments (1)
- [Abstract (cascaded joint processing strategy)] The central claim of 8-fold view reduction (512 to 64) 'without compromising reconstruction quality' and 'improved structural measurement fidelity' rests on the cascaded joint processing strategy being sufficient. However, rotational blur correction in the projection domain necessarily modifies the sinogram, which alters the distribution of sparse-view artifacts that the subsequent image-domain stage must handle; no verification mechanism (e.g., ablation on information preservation or error propagation analysis) is described to confirm that high-frequency structural details survive both stages without irreversible loss.
Simulated Author's Rebuttal
We thank the referee for the constructive comment on the cascaded joint processing strategy. We address the concern point-by-point below and will revise the manuscript accordingly.
read point-by-point responses
-
Referee: [Abstract (cascaded joint processing strategy)] The central claim of 8-fold view reduction (512 to 64) 'without compromising reconstruction quality' and 'improved structural measurement fidelity' rests on the cascaded joint processing strategy being sufficient. However, rotational blur correction in the projection domain necessarily modifies the sinogram, which alters the distribution of sparse-view artifacts that the subsequent image-domain stage must handle; no verification mechanism (e.g., ablation on information preservation or error propagation analysis) is described to confirm that high-frequency structural details survive both stages without irreversible loss.
Authors: We acknowledge that the manuscript does not describe explicit ablations or error-propagation analysis to verify information preservation across the two stages. The empirical validation relies on quantitative metrics and line-profile measurements of via/pad boundaries and traces on both simulated data and real PCB scans, which demonstrate that structural fidelity is maintained after the full cascaded pipeline. Nevertheless, we agree that dedicated verification would strengthen the claims. In the revision we will add an ablation study that (i) compares cascaded versus single-domain processing and (ii) quantifies high-frequency content preservation (e.g., via Fourier analysis and edge sharpness metrics) before and after each stage. revision: yes
Circularity Check
Empirical architecture proposal with no derivation chain reducing to self-inputs
full rationale
The paper proposes an empirical dual-domain SSM-based restoration network (RCL-Mamba) with a cascaded projection-then-image strategy. All performance claims, including the 512-to-64 view reduction and structural fidelity, rest on experimental evaluations against baselines on simulated and real PCB data rather than any first-principles derivation or prediction step. No equations, uniqueness theorems, or fitted-parameter predictions appear in the provided text that would reduce outputs to inputs by construction. The architecture choices (Mamba-CNN dual-branch, domain ordering) are presented as design decisions validated by results, not as self-referential or self-cited necessities. This is the standard case of an applied ML paper whose central claims remain independent of any circular reduction.
Axiom & Free-Parameter Ledger
free parameters (1)
- network hyperparameters and weights
axioms (1)
- domain assumption Rotational blur and sparse artifacts can be sequentially corrected in separate domains without significant residual interaction effects that would require joint optimization.
Reference graph
Works this paper leans on
-
[1]
J. Fu, B.H. Jiang, B. Li, Large field of view computed laminography with the asymmetric rotational scanning geometry, Science China Technological Sciences, 53 (2010) 2261-2271
2010
-
[2]
C. Tan, C. Long, Y. Xi, et al., Orthogonal translation computed laminography reconstruction based on self-prior information and adaptive weighted total variation, Displays, (2025) 103169
2025
-
[3]
C. Tan, A. Wang, Z. Chen, et al., Truncated projection adaptive weighting combined with adaptive TV for artifact reduction in linear computed laminography, Optics & Laser Technology, 193 (2026) 114348
2026
-
[4]
A high efficiency deep learning method for the x-ray image defect detection of casting parts,
L. Xue, J. Hei, Y. Wang, Q. Li, Y. Lu and W. Liu, “A high efficiency deep learning method for the x-ray image defect detection of casting parts,” Measurement Science and Technology, vol. 33, no. 9, 095015, 2022. DOI: 10.1088/1361-6501/ac777b
-
[5]
X. Zou, W. Shi, M. Du, et al., Artifact reduction in rotational computed laminography using a deep learning method, Optics and Lasers in Engineering, 187 (2025) 108881
2025
-
[6]
Y. Long, Q. Zhong, J. Lu, et al., A novel detail-enhanced wavelet domain feature compensation network for sparse-view X-ray computed laminography, Journal of X-Ray Science and Technology, 33 (2025) 488-498
2025
-
[7]
G. Liu, Y. Yan and J. Meng, “ Study on the detection technology for inner-wall outer surface defects of the automotive ABS brake master cylinder based on BM-YOLOv8,” Measurement Science and Technology, vol. 35, no. 5, 055109, 2024. DOI: 10.1088/1361-6501/ad25df
-
[8]
Automated defect detection in precision forging ultrasonic images based on deep learning,
J. Zhao, Y. Zhang, X. Du and X. Sun, “Automated defect detection in precision forging ultrasonic images based on deep learning, ” Measurement Science and Technology, vol. 35, no. 3, 035605, 2024. DOI: 10.1088/1361-6501/ad180c
-
[9]
Nah, T.H
S. Nah, T.H. Kim, K.M. Lee, Deep multi-scale convolutional neural network for dynamic scene deblurring, in: Proceedings of the IEEE conference on computer vision and pattern recognition, (2017) 3883-3891
2017
-
[10]
X. Tao, H. Gao, X. Shen, et al., Scale-recurrent network for deep image deblurring, in: Proceedings of the IEEE conference on computer vision and pattern recognition, (2018) 8174-8182
2018
-
[11]
Zhang, Y
H. Zhang, Y. Dai, H. Li, et al., Deep stacked hierarchical multi-patch network for image deblurring, in: Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, (2019) 5978-5986
2019
-
[12]
Zamir, A
S.W. Zamir, A. Arora, S. Khan, et al., Multi-stage progressive image restoration, in: Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, (2021) 14821-14831
2021
-
[13]
Cho, S.W
S.J. Cho, S.W. Ji, J.P. Hong, et al., Rethinking coarse-to-fine approach in single image deblurring, in: Proceedings of the IEEE/CVF international conference on computer vision, (2021) 4641-4650
2021
-
[14]
L. Chen, X. Chu, X. Zhang, et al., Simple baselines for image restoration, in: European conference on computer vision, Springer Nature Switzerland, Cham, (2022) 17-33
2022
-
[15]
X. Gao, T. Qiu, X. Zhang, et al., Efficient multi-scale network with learnable discrete wavelet transform for blind motion deblurring, in: Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, (2024) 2733-2742
2024
-
[16]
A light weight multi-scale feature fusion steel surface defect detection model based on YOLOv8,
W. Xie, X. Sun and W. Ma, “A light weight multi-scale feature fusion steel surface defect detection model based on YOLOv8, ” Measurement Science and Technology, vol. 35, no. 5, 055017, 2024. DOI: 10.1088/1361-6501/ad296d
-
[17]
T. Jia, L. Shi, C. Wei, et al., Correction of motion artifact in CL based on MAFusNet, Journal of X-Ray Science and Technology, 31 (2023) 393-407
2023
-
[18]
Zamir, A
S.W. Zamir, A. Arora, S. Khan, et al., Restormer: Efficient transformer for high-resolution image restoration, in: Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, (2022) 5728-5739
2022
-
[19]
Tsai, Y.T
F.J. Tsai, Y.T. Peng, Y.Y. Lin, et al., Stripformer: Strip transformer for fast image deblurring, in: European conference on computer vision, Springer Nature Switzerland, Cham, (2022) 146-162
2022
-
[20]
Z. Wang, X. Cun, J. Bao, et al., Uformer: A general u-shaped transformer for image restoration, in: Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, (2022) 17683-17693
2022
-
[21]
L. Kong, J. Dong, J. Ge, et al., Efficient frequency domain-based transformers for high-quality image deblurring, in: Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, (2023) 5886-5895
2023
-
[22]
D. Chen, S. Zhou, J. Pan, et al., A polarization-aided transformer for image deblurring via motion vector decomposition, in: Proceedings of the Computer Vision and Pattern Recognition Conference, (2025) 28061-28070
2025
-
[23]
A. Gu, I. Johnson, K. Goel, et al., Combining recurrent, convolutional, and continuous-time models with linear state space layers, Advances in neural information processing systems, 34 (2021) 572-585
2021
-
[24]
A. Gu, K. Goel, C. Ré, Efficiently modeling long sequences with structured state spaces, arXiv preprint arXiv:2111.00396, (2021)
work page internal anchor Pith review Pith/arXiv arXiv 2021
-
[25]
A. Gu, T. Dao, Mamba: Linear-time sequence modeling with selective state spaces, in: First conference on language modeling, (2024)
2024
-
[26]
Y. Liu, Y. Tian, Y. Zhao, et al., Vmamba: Visual state space model, Advances in neural information processing systems, 37 (2024) 103031-103063
2024
-
[27]
H. Guo, J. Li, T. Dai, et al., Mambair: A simple baseline for image restoration with state-space model, in: European conference on computer vision, Springer Nature Switzerland, Cham, (2024) 222-241
2024
-
[28]
Y. Shi, B. Xia, X. Jin, et al., Vmambair: Visual state space model for image restoration, IEEE Transactions on Circuits and Systems for Video Technology, 35 (2025) 5560-5574
2025
-
[29]
Lin, Y.S
Y.C. Lin, Y.S. Xu, H.W. Chen, et al., Eamamba: Efficient all-around vision state space model for image restoration, in: Proceedings of the IEEE/CVF International Conference on Computer Vision, (2025) 11708-11719
2025
-
[30]
L. Kong, J. Dong, J. Tang, et al., Efficient visual state space model for image deblurring, in: Proceedings of the computer vision and pattern recognition conference, (2025) 12710-12719
2025
-
[31]
H. Gao, B. Ma, Y. Zhang, et al., Learning enriched features via selective state spaces model for efficient image deblurring, in: Proceedings of the 32nd ACM International Conference on Multimedia, (2024) 710-718
2024
-
[32]
B. Li, H. Zhao, W. Wang, et al., Mair: A locality-and continuity-preserving mamba for image restoration, in: Proceedings of the Computer Vision and Pattern Recognition Conference, (2025) 7491-7501
2025
-
[33]
Super-resolution reconstruction of ultrasonic Lamb wave TFM image via deep learning,
W. Zhang, X. Chai, W. Zhu, S. Zheng, G. Fan, Z. Li, H. Zhang and H. Zhang, “Super-resolution reconstruction of ultrasonic Lamb wave TFM image via deep learning,” Measurement Science and Technology, vol. 34, no. 5, 055406, 2023. DOI: 10.1088/1361-6501/acb166
-
[34]
Feldkamp, L.C
L.A. Feldkamp, L.C. Davis, J.W. Kress, Practical cone-beam algorithm, Journal of the Optical Society of America A, 1 (1984) 612-619
1984
-
[35]
Abbas, M
S. Abbas, M. Park, J. Min, et al., Sparse-view computed laminography with a spherical sinusoidal scan for nondestructive testing, Optics Express, 22 (2014) 17745-17755
2014
-
[36]
A. Biguri, M. Dosanjh, S. Hancock, M. Soleimani, TIGRE: a MATLAB-GPU toolbox for CBCT image reconstruction, Biomedical Physics & Engineering Express, 2 (2016) 055010. https://doi.org/10.1088/2057-1976/2/5/055010
-
[37]
Wang, A.C
Z. Wang, A.C. Bovik, H.R. Sheikh, et al., Image quality assessment: from error visibility to structural similarity, IEEE transactions on image processing, 13 (2004) 600-612
2004
-
[38]
W. Xue, L. Zhang, X. Mou, et al., Gradient magnitude similarity deviation: A highly efficient perceptual image quality index, IEEE transactions on image processing, 23 (2013) 684-695
2013
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.