Functional Multi-Reference Alignment via Deconvolution
Pith reviewed 2026-05-21 23:55 UTC · model grok-4.3
The pith
The multi-reference alignment problem reduces to deconvolution, where the signal is recovered from second-order statistics via Kotlarski's formula.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
In the functional multi-reference alignment problem the signal is estimated from shifted, noisy observations by treating the problem as deconvolution and recovering the signal from second-order statistics via Kotlarski's formula. The formula is extended to general dimension, and the estimation procedure is studied for signals whose Fourier transforms vanish at certain points.
What carries the argument
Kotlarski's formula, which identifies the characteristic function of the signal from the joint distribution of summed independent copies, applied here to the covariance structure of the MRA observations.
If this is right
- MRA algorithms can be built from existing deconvolution estimators that use only second moments.
- The procedure works in arbitrary dimensions without change of formulation.
- Recovery remains possible for signals whose Fourier transforms have isolated zeros.
Where Pith is reading between the lines
- Rates and minimax results already known for deconvolution could be imported to give concrete error bounds for functional MRA.
- The same second-order approach might apply to other alignment tasks such as image registration under random translations.
- Higher-order moment versions of Kotlarski's formula could yield alternative estimators with different robustness properties.
Load-bearing premise
Kotlarski's identification result applies directly to the functional MRA observations under the paper's noise and shift models.
What would settle it
A simulation in which the signal reconstructed from empirical second-order statistics via the extended Kotlarski formula matches the true signal within the expected statistical error as the number of observations grows.
Figures
read the original abstract
This paper studies the multi-reference alignment (MRA) problem of estimating a signal function from shifted, noisy observations. Our functional formulation reveals a new connection between MRA and deconvolution: the signal can be estimated from second-order statistics via Kotlarski's formula, an important identification result in deconvolution with replicated measurements. To design our MRA algorithms, we extend Kotlarski's formula to general dimension and study the estimation of signals with vanishing Fourier transform, thus also contributing to the deconvolution literature. We validate our deconvolution approach to MRA through both theory and numerical experiments.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The paper studies the functional multi-reference alignment (MRA) problem of estimating a signal from shifted noisy observations. It establishes a connection to deconvolution by showing that the signal can be recovered from second-order statistics using Kotlarski's formula, derives a multivariate extension of this identification result, provides explicit conditions (including controlled vanishing of the Fourier transform) under which recovery is possible up to global shift, and validates the approach through theoretical proofs and numerical experiments.
Significance. If the central claims hold, the work is significant for bridging the MRA and deconvolution literatures with a new identification result from second-order statistics. The explicit derivation of the multivariate extension, the matching of noise and shift models to the replicated-measurement structure required by Kotlarski's formula, and the supply of proofs for the recoverability conditions (including vanishing Fourier transforms) are clear strengths that advance both fields and support practical algorithm design.
minor comments (3)
- §3 (multivariate extension): the statement of the extended Kotlarski formula would benefit from an explicit list of the minimal assumptions on the characteristic function of the noise that are carried over from the univariate case, to make the applicability to the functional MRA model immediately verifiable.
- Numerical experiments section: the description of how the vanishing Fourier transform condition is enforced in the simulated signals and how error is measured relative to the global shift ambiguity could be expanded for reproducibility.
- Notation: the use of the same symbol for the signal and its Fourier transform in different sections occasionally leads to ambiguity; a consistent hat notation or separate symbols would improve clarity.
Simulated Author's Rebuttal
We thank the referee for the positive and accurate summary of our manuscript, which correctly identifies the core contribution: extending Kotlarski's deconvolution formula to the functional MRA setting with multivariate signals and controlled vanishing of the Fourier transform. We appreciate the recommendation for minor revision and the recognition that the work bridges the MRA and deconvolution literatures.
Circularity Check
No significant circularity identified
full rationale
The paper applies Kotlarski's formula—an established external identification result from the deconvolution literature—to the functional MRA model and derives a multivariate extension with explicit conditions on vanishing Fourier transforms. The model assumptions (noise and shift structure) are matched to the replicated-measurement requirements of the formula, with proofs supplied in the relevant sections. This constitutes independent mathematical support rather than a reduction to fitted parameters or self-citation chains within the paper. The central claim is therefore self-contained against external benchmarks and does not reduce to its inputs by construction.
Axiom & Free-Parameter Ledger
axioms (1)
- domain assumption Kotlarski's identification result holds for the functional multi-reference alignment model with replicated measurements.
Lean theorems connected to this paper
-
IndisputableMonolith/Cost/FunctionalEquation.leanwashburn_uniqueness_aczel unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
Theorem 2.1 (Identification). ... f̂(ω) = exp(∫₀¹ ∇₁Ψ(αω,αω)/Ψ(αω,αω) · ω dα)
-
IndisputableMonolith/Foundation/RealityFromDistinction.leanreality_from_one_distinction unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
Corollary 2.3 (Multivariate Kotlarski) ... φ₀(ω) = exp(−iω·E[X₁] + ∫₀¹ ∇₁ψ(0,αω)/ψ(0,αω)·ω dα)
What do these tags mean?
- matches
- The paper's claim is directly supported by a theorem in the formal canon.
- supports
- The theorem supports part of the paper's argument, but the paper may add assumptions or extra steps.
- extends
- The paper goes beyond the formal theorem; the theorem is a base layer rather than the whole result.
- uses
- The paper appears to rely on the theorem as machinery.
- contradicts
- The paper's claim conflicts with a theorem or certificate in the canon.
- unclear
- Pith found a possible connection, but the passage is too broad, indirect, or ambiguous to say the theorem truly supports the claim.
Reference graph
Works this paper leans on
-
[1]
A. Abas, T. Bendory, and N. Sharon , The generalized method of moments for multi-reference align- ment, IEEE Transactions on Signal Processing, 70 (2022), pp. 1377–1388
work page 2022
-
[2]
E. Abbe, T. Bendory, W. Leeb, J. M. Pereira, N. Sharon, and A. Singer , Multireference alignment is easier with an aperiodic translation distribution, IEEE Transactions on Information Theory, 65 (2018), pp. 3565–3584
work page 2018
-
[3]
E. Abbe, J. M. Pereira, and A. Singer , Estimation in the group action channel, in 2018 IEEE International Symposium on Information Theory (ISIT), IEEE, 2018, pp. 561–565
work page 2018
-
[4]
O. Al-Ghattas, J. Chen, D. Sanz-Alonso, and N. W aniorek , Optimal estimation of structured covariance operators, arXiv preprint arXiv:2408.02109, (2024)
- [5]
-
[6]
O. Al-Ghattas and D. Sanz-Alonso , Covariance operator estimation via adaptive thresholding, arXiv preprint arXiv:2405.18562, (2024)
-
[7]
A. Balanov, W. Huleihel, and T. Bendory ,Expectation-maximization for multi-reference alignment: Two pitfalls and one remedy, arXiv preprint arXiv:2505.21435, (2025)
-
[8]
A. Bandeira, Y. Chen, R. R. Lederman, and A. Singer , Non-unique games over compact groups and orientation estimation in cryo-EM, Inverse Problems, (2020)
work page 2020
-
[9]
A. Bandeira, J. Niles-Weed, and P. Rigollet , Optimal rates of estimation for multi-reference alignment, Mathematical Statistics and Learning, 2 (2020), pp. 25–75
work page 2020
- [10]
-
[11]
A. S. Bandeira, N. Boumal, and V. Voroninski , On the low-rank approach for semidefinite programs arising in synchronization and community detection, inConferenceonLearningTheory, 2016, pp.361– 382
work page 2016
-
[12]
A. S. Bandeira, M. Charikar, A. Singer, and A. Zhu , Multireference alignment using semidefinite programming, in Proceedings of the 5th Conference on Innovations in Theoretical Computer Science, ACM, 2014, pp. 459–470
work page 2014
-
[13]
V. R. Bejjanki, R. A. Da Sil veira, J. D. Cohen, and N. B. Turk-Browne , Noise correlations in the human brain and their impact on pattern classification, PLoS Computational Biology, 13 (2017), p. e1005674
work page 2017
-
[14]
T. Bendory, N. Boumal, C. Ma, Z. Zhao, and A. Singer , Bispectrum inversion with application to multireference alignment, IEEE Transactions on Signal Processing, 66 (2017), pp. 1037–1050
work page 2017
-
[15]
T. Bendory and D. Edidin , The sample complexity of sparse multireference alignment and single- particle cryo-electron microscopy, SIAM Journal on Mathematics of Data Science, 6 (2024), pp. 254– 282
work page 2024
-
[16]
T. Bendory, A. Jaffe, W. Leeb, N. Sharon, and A. Singer , Super-resolution multi-reference alignment, Information and Inference: A Journal of the IMA, 11 (2022), pp. 533–555
work page 2022
-
[17]
Boumal, Nonconvex phase synchronization, SIAMJournalonOptimization, 26(2016), pp.2355–2377
N. Boumal, Nonconvex phase synchronization, SIAMJournalonOptimization, 26(2016), pp.2355–2377
work page 2016
-
[18]
L. G. Brown , A survey of image registration techniques, ACM Computing Surveys (CSUR), 24 (1992), pp. 325–376
work page 1992
-
[19]
Y. Chen and E. J. Candès , The projected power method: An efficient algorithm for joint alignment from pairwise differences, Communications on Pure and Applied Mathematics, 71 (2018), pp. 1648–1714
work page 2018
-
[20]
Y. Chen, L. J. Guibas, and Q.-X. Huang , Near-optimal joint object matching via convex relaxation, in Proceedings of the 31st International Conference on Machine Learning, vol. 32 of Proceedings of Machine Learning Research, 2014, pp. 100–108
work page 2014
- [21]
-
[22]
F. Comte and J. Kappus , Density deconvolution from repeated measurements without symmetry as- sumption on the errors, Journal of Multivariate Analysis, 140 (2015), pp. 31–46
work page 2015
-
[23]
A. P. Dempster, N. M. Laird, and D. B. Rubin , Maximum likelihood from incomplete data via the EM algorithm, Journal of the Royal Statistical Society: Series B (Methodological), 39 (1977), pp. 1–22
work page 1977
-
[24]
R. Diamond, On the multiple simultaneous superposition of molecular structures by rigid body transfor- mations, Protein Science, 1 (1992), pp. 1279–1287
work page 1992
-
[25]
Z. Dou, Z. F an, and H. H. Zhou , Rates of estimation for high-dimensional multireference alignment, The Annals of Statistics, 52 (2024), pp. 261–284
work page 2024
-
[26]
K. Evdokimov , Identification and estimation of a nonparametric panel data model with unobserved heterogeneity, Department of Economics, Princeton University, 1 (2010), p. 23
work page 2010
-
[27]
K. Evdokimov and H. White , Some extensions of a lemma of Kotlarski, Econometric Theory, 28 (2012), pp. 925–932
work page 2012
-
[28]
J. F an, On the optimal rates of convergence for nonparametric deconvolution problems, The Annals of Statistics, (1991), pp. 1257–1272
work page 1991
-
[29]
H. Foroosh, J. B. Zerubia, and M. Berthod , Extension of phase correlation to subpixel registration, IEEE Transactions on Image Processing, 11 (2002), pp. 188–200
work page 2002
- [30]
-
[31]
S. Ghosh and P. Rigollet , Sparse multi-reference alignment: Phase retrieval, uniform uncertainty principles and the beltway problem, Foundations of Computational Mathematics, 23 (2023), pp. 1851– 1898
work page 2023
-
[32]
L. P. Hansen , Large sample properties of generalized method of moments estimators, Econometrica: Journal of the Econometric Society, (1982), pp. 1029–1054
work page 1982
- [33]
-
[34]
M. Hirn and A. Little , Wavelet invariants for statistically robust multi-reference alignment, Informa- tion and Inference: A Journal of the IMA, 10 (2021), pp. 1287–1351
work page 2021
-
[35]
, Power spectrum unbiasing for dilation-invariant multi-reference alignment, Journal of Fourier Analysis and Applications, 29 (2023), p. 43
work page 2023
-
[36]
X. Huang and S. G. Lisberger , Noise correlations in cortical area mt and their potential impact on trial-by-trial variation in the direction and speed of smooth-pursuit eye movements, Journal of Neurophysiology, 101 (2009), pp. 3012–3030
work page 2009
-
[37]
Z. Kam , The reconstruction of structure from electron micrographs of randomly oriented particles, in Electron Microscopy at Molecular Dimensions, Springer, 1980, pp. 270–277
work page 1980
-
[38]
I. Kotlarski, On characterizing the gamma and the normal distribution, Pacific Journal of Mathematics, 20 (1967), pp. 69–76
work page 1967
-
[39]
D. Kurisu and T. Otsu , On the uniform convergence of deconvolution estimators from repeated mea- surements, Econometric Theory, 38 (2022), pp. 172–193
work page 2022
- [40]
-
[41]
Meister, Deconvolution Problems in Nonparametric Statistics, vol
A. Meister, Deconvolution Problems in Nonparametric Statistics, vol. 193, Lecture Notes in Statistics. Springer-Verlag, 2007
work page 2007
-
[42]
S. Mendelson, Empirical processes with a boundedψ1 diameter, Geometric and Functional Analysis, 20 (2010), pp. 988–1027
work page 2010
- [43]
-
[44]
W. Park and G. S. Chirikjian , An assembly automation approach to alignment of noncircular projec- tions in electron microscopy, IEEE Transactions on Automation Science and Engineering, 11 (2014), pp. 668–679
work page 2014
-
[45]
W. Park, C. R. Midgett, D. R. Madden, and G. S. Chirikjian , A stochastic kinematic model of class averaging in single-particle electron microscopy, The International Journal of Robotics Research, FUNCTIONAL MULTI-REFERENCE ALIGNMENT VIA DECONVOLUTION 23 30 (2011), pp. 730–754
work page 2011
- [46]
- [47]
-
[48]
B. L. S. P. Rao , Identifiability in Stochastic Models, Academic Press, 1992
work page 1992
-
[49]
E. Romanov, T. Bendory, and O. Ordentlich ,Multi-reference alignment in high dimensions: sample complexity and phase transition, SIAM Journal on Mathematics of Data Science, 3 (2021), pp. 494– 523
work page 2021
-
[50]
B. M. Sadler and G. B. Giannakis , Shift-and rotation-invariant object reconstruction using the bis- pectrum, JOSA A, 9 (1992), pp. 57–69
work page 1992
-
[51]
S. M. Schennach , Estimation of nonlinear models with measurement error, Econometrica, 72 (2004), pp. 33–75
work page 2004
-
[52]
S. H. Scheres, M. V alle, R. Nuñez, C. O. Sorzano, R. Marabini, G. T. Herman, and J.-M. Carazo, Maximum-likelihood multi-reference refinement for electron microscopy images, Journal of Molecular Biology, 348 (2005), pp. 139–149
work page 2005
- [53]
-
[54]
A. Singer, Angular synchronization by eigenvectors and semidefinite programming, Applied and Com- putational Harmonic Analysis, 30 (2011), pp. 20–36
work page 2011
-
[55]
Talagrand, Upper and Lower Bounds for Stochastic Processes: Decomposition Theorems, vol
M. Talagrand, Upper and Lower Bounds for Stochastic Processes: Decomposition Theorems, vol. 60, Springer Nature, 2022
work page 2022
-
[56]
D. L. Theobald and P. A. Steindel , Optimal simultaneous superpositioning of multiple structures with missing data, Bioinformatics, 28 (2012), pp. 1972–1979
work page 2012
-
[57]
Vershynin, High-dimensional Probability: An Introduction with Applications in Data Science, vol
R. Vershynin, High-dimensional Probability: An Introduction with Applications in Data Science, vol. 47, Cambridge University Press, 2018
work page 2018
-
[58]
L. Yin, A. Little, and M. Hirn , Bispectrum unbiasing for dilation-invariant multi-reference alignment, IEEE Transactions on Signal Processing, (2024), pp. 1–16
work page 2024
-
[59]
Y. Zhong and N. Boumal , Near-optimal bounds for phase synchronization, SIAM Journal on Opti- mization, 28 (2018), pp. 989–1016
work page 2018
-
[60]
J. P. Zw art, R. v an der Heiden, S. Gelsema, and F. Groen,Fast translation invariant classification of HRR range profiles in a zero phase representation, IEE Proceedings-Radar, Sonar and Navigation, 150 (2003), pp. 411–418. Appendix A. Supplementary Materials for Section 2.This section contains the proof of an auxiliary result, Lemma A.1, used to establi...
work page 2003
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