The Score Kalman Filter
Pith reviewed 2026-05-20 15:31 UTC · model grok-4.3
The pith
The Score Kalman Filter closes nonlinear moment hierarchies with score matching and Stein's identity, avoiding all partition function integrals.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
The central discovery is that score matching on propagated moments produces parameters that, when inserted into Stein's identity, close the moment hierarchy for both the prediction step under nonlinear dynamics and the update step after nonlinear measurements, thereby completing the Bayesian filter loop through linear algebra alone and recovering the information-form Kalman filter when the models are linear.
What carries the argument
Score matching for density reconstruction from moments via a single linear solve, combined with Stein's identity applied to the fitted score to close the moment hierarchy without integration.
If this is right
- Every step of the predict-update cycle reduces to assembling and solving linear systems whose coefficients come directly from the current moments.
- The SKF recovers the classical information-form Kalman filter exactly when the dynamics and measurements are linear.
- The method scales at least to twenty-dimensional state spaces on nonlinear coupled-oscillator networks.
- It produces lower root-mean-square error than the extended, unscented, ensemble, and particle Kalman filters on the reported synthetic benchmarks.
Where Pith is reading between the lines
- The linear-algebra structure may allow sparse or iterative solvers to push the dimension well beyond twenty in structured large-scale problems.
- Replacing the current score model with a learned or parametric form could improve accuracy in strongly non-Gaussian regimes without changing the overall loop.
- Analogous score-Steins closures might be applied to moment methods for stochastic differential equations or continuous-time filtering.
Load-bearing premise
Score matching from the propagated moments produces a density whose score function can be directly inserted into Stein's identity to accurately close the moment hierarchy for the nonlinear dynamics and measurement models.
What would settle it
In a low-dimensional nonlinear system where exact moments can be computed by direct numerical integration, check whether the SKF's predicted and updated moments match those exact values within sampling error as the moment order is increased.
Figures
read the original abstract
A central obstacle in nonlinear Bayesian filtering is representing the belief distribution. Moment-based filters address this by propagating polynomial moments and reconstructing a density from them. Recent work completes the predict-update loop via the maximum-entropy (MaxEnt) principle, but each step requires the partition function and its gradient, both $n$-dimensional integrals whose cost scales exponentially, restricting the demonstrated MaxEnt moment filtering to $n \le 4$. We avoid the partition function entirely by combining score matching with Stein's identity. In our setting, score matching reduces the density fit to a single linear solve whose coefficients are assembled directly from the propagated moments. The same parameters then drive Stein's identity to close the moment hierarchy during prediction and to recover posterior moments after each Bayesian update, keeping the full predict-update loop free of partition function evaluation. The resulting Score Kalman Filter (SKF) reduces to the classical information-form Kalman filter as a special case and performs every step through linear algebra. On nonlinear coupled-oscillator networks, the SKF runs through $n=20$ and reports lower RMSE than the EKF, UKF, EnKF, and particle-filter baselines on the tested synthetic benchmarks.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript introduces the Score Kalman Filter (SKF) for nonlinear Bayesian filtering. It propagates polynomial moments and reconstructs the density via score matching, which reduces to a single linear solve assembled from the moments. Stein's identity is then used to close the moment hierarchy in both the prediction and update steps, avoiding any partition-function evaluation. The method is claimed to reduce exactly to the classical information-form Kalman filter in the linear-Gaussian case and is demonstrated on coupled-oscillator networks with state dimension up to n=20, reporting lower RMSE than EKF, UKF, EnKF, and particle-filter baselines on the tested synthetic benchmarks.
Significance. If the central construction is shown to close the nonlinear moment hierarchy without additional bias or truncation, the SKF would provide a scalable, partition-function-free moment filter that operates entirely through linear algebra. The explicit reduction to the information-form Kalman filter and the ability to reach n=20 are concrete strengths that distinguish it from prior MaxEnt moment filters limited to n≤4.
major comments (2)
- [Abstract (central construction)] The central claim that score matching on the propagated moments followed by Stein's identity exactly closes the moment hierarchy for nonlinear dynamics and measurements is load-bearing. The abstract states that the linear solve assembles coefficients directly from the moments and that the same parameters drive Stein's identity, but provides no derivation showing that the resulting score produces E[score · polynomial] expectations that match the true integrals against the unknown transition kernel when the dynamics contain quadratic or cubic nonlinearities. This must be supplied with an explicit proof or a counter-example analysis.
- [Abstract (experimental claims)] The reported performance advantage on the n=20 oscillator benchmarks rests on the assumption that the score-matched density yields unbiased moment closure. Without error bars, the number of Monte-Carlo trials, or the precise experimental protocol, it is impossible to judge whether the lower RMSE is statistically meaningful or an artifact of the particular synthetic instances.
minor comments (2)
- [Abstract] The abstract mentions that every step is performed through linear algebra; a short pseudocode or complexity table would help readers verify the claimed O(n^3) scaling.
- [Method description] Clarify the precise score-matching objective (e.g., whether it is the standard Fisher divergence or a moment-weighted variant) and the exact linear system that is solved for the score parameters.
Simulated Author's Rebuttal
We thank the referee for the careful and constructive review of our manuscript on the Score Kalman Filter. The comments identify important points regarding the theoretical justification of the moment closure and the statistical rigor of the experiments. We respond to each major comment below and outline the changes we will incorporate in the revised version.
read point-by-point responses
-
Referee: [Abstract (central construction)] The central claim that score matching on the propagated moments followed by Stein's identity exactly closes the moment hierarchy for nonlinear dynamics and measurements is load-bearing. The abstract states that the linear solve assembles coefficients directly from the moments and that the same parameters drive Stein's identity, but provides no derivation showing that the resulting score produces E[score · polynomial] expectations that match the true integrals against the unknown transition kernel when the dynamics contain quadratic or cubic nonlinearities. This must be supplied with an explicit proof or a counter-example analysis.
Authors: We agree that the abstract is too concise to convey the full justification. The manuscript body (Sections 3.2–3.3 and 4.1) derives the score-matching linear system from the moments and shows how the resulting parameters enter Stein’s identity to produce the closed moment updates. Because Stein’s identity holds exactly for any sufficiently smooth density and the score is represented in the same polynomial basis used for the moments, the expectations E[score · p(x)] match the required integrals for polynomial nonlinearities up to cubic order without additional truncation. To make this explicit and self-contained, we will insert a new subsection (provisionally 3.4) that walks through the algebraic verification for quadratic and cubic terms, confirming that no bias is introduced beyond the score-matching approximation itself. revision: yes
-
Referee: [Abstract (experimental claims)] The reported performance advantage on the n=20 oscillator benchmarks rests on the assumption that the score-matched density yields unbiased moment closure. Without error bars, the number of Monte-Carlo trials, or the precise experimental protocol, it is impossible to judge whether the lower RMSE is statistically meaningful or an artifact of the particular synthetic instances.
Authors: We concur that additional experimental detail is required for reproducibility and statistical assessment. The revised manuscript will expand the numerical-results section to report: (i) 100 independent Monte-Carlo trials per filter, (ii) mean RMSE together with standard-deviation error bars, and (iii) the complete benchmark protocol, including initial-state distribution, process- and measurement-noise covariances, and the precise definition of the coupled-oscillator dynamics. These additions will allow readers to evaluate the significance of the reported improvements. revision: yes
Circularity Check
No significant circularity in the Score Kalman Filter derivation chain
full rationale
The derivation assembles score-matching parameters via a single linear solve whose coefficients come directly from the propagated moments, then applies Stein's identity to those parameters in order to close the moment hierarchy for the predict and update steps. This constitutes an approximation procedure whose validity rests on the quality of the score-matched density for the nonlinear push-forward, rather than any tautological reduction of a predicted quantity to the input moments by construction. The paper explicitly notes that the construction recovers the classical information-form Kalman filter as a special case, and no load-bearing self-citation, uniqueness theorem, or ansatz smuggling is invoked to justify the central steps. The method therefore remains self-contained against external benchmarks and does not exhibit any of the enumerated circularity patterns.
Axiom & Free-Parameter Ledger
axioms (1)
- domain assumption Stein's identity holds for the score function obtained from the moment-based density fit
Lean theorems connected to this paper
-
IndisputableMonolith/Cost/FunctionalEquation.leanwashburn_uniqueness_aczel unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
score matching reduces the density fit to a single linear solve whose coefficients are assembled directly from the propagated moments... Stein’s identity to close the moment hierarchy
-
IndisputableMonolith/Foundation/ArithmeticFromLogic.leanLogicNat ≃ Nat recovery unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
The resulting Score Kalman Filter (SKF) reduces to the classical information-form Kalman filter as a special case
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]
R. E. Kalman. A new approach to linear filtering and prediction problems.Journal of Basic Engineering (ASME Transactions, Series D), 82(1):35–45, 1960
work page 1960
-
[2]
Stanley F. Schmidt. Application of state-space methods to navigation problems. InAdvances in Control Systems, volume 3, pages 293–340. Academic Press, 1966
work page 1966
-
[3]
Jazwinski.Stochastic Processes and Filtering Theory
Andrew H. Jazwinski.Stochastic Processes and Filtering Theory. Academic Press, New York, 1970
work page 1970
-
[4]
Simon J. Julier and Jeffrey K. Uhlmann. New extension of the Kalman filter to nonlinear systems. InSignal Processing, Sensor Fusion, and Target Recognition VI, volume 3068 of Proceedings of SPIE, pages 182–193, 1997
work page 1997
-
[5]
Eric A. Wan and Rudolph van der Merwe. The unscented Kalman filter for nonlinear estimation. InProceedings of the IEEE Adaptive Systems for Signal Processing, Communications, and Control Symposium (AS-SPCC), pages 153–158, 2000
work page 2000
-
[6]
Geir Evensen. Sequential data assimilation with a nonlinear quasi-geostrophic model using Monte Carlo methods to forecast error statistics.Journal of Geophysical Research: Oceans, 99 (C5):10143–10162, 1994
work page 1994
-
[7]
Analysis scheme in the ensemble Kalman filter.Monthly Weather Review, 126(6):1719–1724, 1998
Gerrit Burgers, Peter Jan van Leeuwen, and Geir Evensen. Analysis scheme in the ensemble Kalman filter.Monthly Weather Review, 126(6):1719–1724, 1998
work page 1998
-
[8]
The invariant extended Kalman filter as a stable observer
Axel Barrau and Silvère Bonnabel. The invariant extended Kalman filter as a stable observer. IEEE Transactions on Automatic Control, 62(4):1797–1812, 2017
work page 2017
-
[9]
A code for unscented Kalman filtering on manifolds (UKF-M)
Martin Brossard, Axel Barrau, and Silvère Bonnabel. A code for unscented Kalman filtering on manifolds (UKF-M). InIEEE International Conference on Robotics and Automation (ICRA), pages 5701–5708, 2020
work page 2020
-
[10]
Max entropy moment Kalman filter for polynomial systems with arbitrary noise
Sangli Teng, Harry Zhang, David Jin, Ashkan Jasour, Ram Vasudevan, Maani Ghaffari, and Luca Carlone. Max entropy moment Kalman filter for polynomial systems with arbitrary noise. InAdvances in Neural Information Processing Systems (NeurIPS), 2025
work page 2025
-
[11]
Aapo Hyvärinen. Estimation of non-normalized statistical models by score matching.Journal of Machine Learning Research, 6:695–709, 2005
work page 2005
-
[12]
Christian Kuehn. Moment closure—a brief review. InControl of Self-Organizing Nonlinear Systems, Understanding Complex Systems, pages 253–271. Springer, Cham, 2016. 10
work page 2016
-
[13]
On the use of the normal approximation in the treatment of stochastic processes
Peter Whittle. On the use of the normal approximation in the treatment of stochastic processes. Journal of the Royal Statistical Society, Series B, 19(2):268–281, 1957
work page 1957
-
[14]
C. David Levermore. Moment closure hierarchies for kinetic theories.Journal of Statistical Physics, 83(5–6):1021–1065, 1996
work page 1996
- [15]
- [16]
- [17]
-
[18]
Harold Grad. On the kinetic theory of rarefied gases.Communications on Pure and Applied Mathematics, 2(4):331–407, 1949
work page 1949
- [19]
-
[20]
Matt J. Keeling. The effects of local spatial structure on epidemiological invasions.Proceedings of the Royal Society of London B, 266(1421):859–867, 1999
work page 1999
-
[21]
István Z. Kiss, Joel C. Miller, and Péter L. Simon.Mathematics of Epidemics on Networks: From Exact to Approximate Models, volume 46 ofInterdisciplinary Applied Mathematics. Springer Cham, 2017
work page 2017
-
[22]
Lawrence R. Mead and N. Papanicolaou. Maximum entropy in the problem of moments. Journal of Mathematical Physics, 25(8):2404–2417, 1984
work page 1984
-
[23]
MePoly: Max entropy polynomial policy optimiza- tion.arXiv preprint arXiv:2602.17832, 2026
Hang Liu, Sangli Teng, and Maani Ghaffari. MePoly: Max entropy polynomial policy optimiza- tion.arXiv preprint arXiv:2602.17832, 2026
-
[24]
Mitsuki Nagai and Keisuke Yano. The geometry of Stein’s method of moments: A canonical decomposition via score matching.arXiv preprint arXiv:2603.12843, 2026
-
[25]
Ross Hartley, Maani Ghaffari, Ryan M. Eustice, and Jessy W. Grizzle. Contact-aided invariant extended Kalman filtering for robot state estimation.The International Journal of Robotics Research, 39(4):402–430, 2020
work page 2020
-
[26]
Equivariant filter (EqF).IEEE Transactions on Automatic Control, 68(6):3501–3512, 2023
Pieter van Goor, Tarek Hamel, and Robert Mahony. Equivariant filter (EqF).IEEE Transactions on Automatic Control, 68(6):3501–3512, 2023
work page 2023
- [27]
-
[28]
Moment-based Kalman filter: Nonlinear Kalman filtering with exact moment propagation
Yutaka Shimizu, Ashkan Jasour, Maani Ghaffari, and Shinpei Kato. Moment-based Kalman filter: Nonlinear Kalman filtering with exact moment propagation. InIEEE International Conference on Robotics and Automation (ICRA), pages 3948–3954. IEEE, 2023
work page 2023
-
[29]
Sangli Teng, Harry Zhang, David Jin, Ashkan Jasour, Maani Ghaffari, and Luca Carlone. GMKF: Generalized moment Kalman filter for polynomial systems with arbitrary noise.arXiv preprint arXiv:2403.04712, 2024
-
[30]
Kingma, Abhishek Kumar, Stefano Ermon, and Ben Poole
Yang Song, Jascha Sohl-Dickstein, Diederik P. Kingma, Abhishek Kumar, Stefano Ermon, and Ben Poole. Score-based generative modeling through stochastic differential equations. In International Conference on Learning Representations (ICLR), 2021
work page 2021
-
[31]
Score matching based assumed density filtering with the von Mises-Fisher distribution
Mario Bukal, Ivan Markovi´c, and Ivan Petrovi´c. Score matching based assumed density filtering with the von Mises-Fisher distribution. In20th International Conference on Information Fusion (FUSION), 2017. 11
work page 2017
-
[32]
Gaunt, Babette Picker, and Yvik Swan
Bruno Ebner, Adrian Fischer, Robert E. Gaunt, Babette Picker, and Yvik Swan. Stein’s method of moments.Scandinavian Journal of Statistics, 52(4):1594–1624, 2025
work page 2025
-
[33]
Popov, Kristen Michaelson, Felipe Giraldo-Grueso, Dalton Durant, Simone Servadio, and Uwe D
Renato Zanetti, Andrey A. Popov, Kristen Michaelson, Felipe Giraldo-Grueso, Dalton Durant, Simone Servadio, and Uwe D. Hanebeck. A survey of nonlinear estimation filters.Journal of Advances in Information Fusion, 2025. Accepted for publication
work page 2025
-
[34]
Guy Revach, Nir Shlezinger, Xiaoyong Ni, Adrià López Escoriza, Ruud J. G. van Sloun, and Yonina C. Eldar. KalmanNet: Neural network aided Kalman filtering for partially known dynamics.IEEE Transactions on Signal Processing, 70:1532–1547, 2022
work page 2022
-
[35]
Martin J. Wainwright and Michael I. Jordan. Graphical models, exponential families, and variational inference.Foundations and Trends in Machine Learning, 1(1–2):1–305, 2008
work page 2008
-
[36]
Edwin T. Jaynes. Information theory and statistical mechanics.Physical Review, 106(4): 620–630, 1957
work page 1957
-
[37]
Charles Stein. A bound for the error in the normal approximation to the distribution of a sum of dependent random variables.Proceedings of the Sixth Berkeley Symposium on Mathematical Statistics and Probability, 2:583–602, 1972
work page 1972
-
[38]
Springer, Berlin, 6th edition, 2003
Bernt Øksendal.Stochastic Differential Equations: An Introduction with Applications. Springer, Berlin, 6th edition, 2003
work page 2003
-
[39]
Bar-Itzhack, and Yaakov Oshman
Daniel Choukroun, Itzhack Y . Bar-Itzhack, and Yaakov Oshman. Novel quaternion Kalman filter.IEEE Transactions on Aerospace and Electronic Systems, 42(1):174–190, 2006
work page 2006
-
[40]
Brian C. Hall.Lie Groups, Lie Algebras, and Representations: An Elementary Introduction, volume 222 ofGraduate Texts in Mathematics. Springer, 2nd edition, 2015
work page 2015
-
[41]
Gregory S. Chirikjian.Stochastic Models, Information Theory, and Lie Groups, Volume 2: Analytic Methods and Modern Applications. Birkhäuser, Boston, 2012
work page 2012
-
[42]
Jean B. Lasserre. Global optimization with polynomials and the problem of moments.SIAM Journal on Optimization, 11(3):796–817, 2001. doi: 10.1137/S1052623400366802
-
[43]
Pablo A. Parrilo. Semidefinite programming relaxations for semialgebraic problems.Mathe- matical Programming, 96(2):293–320, 2003. doi: 10.1007/s10107-003-0387-5
-
[44]
Measuring sample quality with Stein’s method
Jackson Gorham and Lester Mackey. Measuring sample quality with Stein’s method. In Advances in Neural Information Processing Systems (NeurIPS), 2015
work page 2015
-
[45]
Minimum Stein discrepancy estimators
Alessandro Barp, François-Xavier Briol, Andrew Duncan, Mark Girolami, and Lester Mackey. Minimum Stein discrepancy estimators. InAdvances in Neural Information Processing Systems (NeurIPS), 2019
work page 2019
-
[46]
Andreas Anastasiou, Alessandro Barp, François-Xavier Briol, Bruno Ebner, Robert E. Gaunt, Fatemeh Ghaderinezhad, Jackson Gorham, Arthur Gretton, Christophe Ley, Qiang Liu, Lester Mackey, Chris J. Oates, Gesine Reinert, and Yvik Swan. Stein’s method meets computational statistics: A review of some recent developments.Statistical Science, 38(1):120–139, 2023
work page 2023
-
[47]
Riemannian score-based generative modelling
Valentin De Bortoli, Emile Mathieu, Michael Hutchinson, James Thornton, Yee Whye Teh, and Arnaud Doucet. Riemannian score-based generative modelling. InAdvances in Neural Information Processing Systems (NeurIPS), 2022
work page 2022
-
[48]
Weixin Wang and Taeyoung Lee. Uncertainty propagation for general stochastic hybrid systems on compact Lie groups.SIAM Journal on Applied Dynamical Systems, 21(3):2215–2240, 2022
work page 2022
-
[49]
René Thom.Structural Stability and Morphogenesis. W. A. Benjamin, 1975
work page 1975
-
[50]
R. E. Kalman. Contributions to the theory of optimal control.Boletín de la Sociedad Matemática Mexicana, 5(2):102–119, 1960
work page 1960
-
[51]
D. Q. Mayne, J. B. Rawlings, C. V . Rao, and P. O. M. Scokaert. Constrained model predictive control: Stability and optimality.Automatica, 36(6):789–814, 2000. 12
work page 2000
-
[52]
Aaron D. Ames, Xiangru Xu, Jessy W. Grizzle, and Paulo Tabuada. Control barrier function based quadratic programs for safety critical systems.IEEE Transactions on Automatic Control, 62(8):3861–3876, 2017. 13 A Background on exponential families and maximum entropy This section collects standard results on exponential families [ 35, 36] that are used in ou...
work page 2017
-
[53]
= 1 2P = Ω 2 .(A.27) Hence, score matching recovers the information vector η and the precision matrix Ω exactly from the first two moments. 20 D.4 Prediction step reduces to Riccati For affine dynamics dx= (Ax+b)dt+h dW with H= 1 2 hh⊤ constant, the score PDE (A.24) with S=−Ω , T= 0 , JX =A , ∇(∇ ·X) = 0 reduces to ∂ts=−A ⊤s+ Ω(Ax+b)−2ΩHs . Substitutings=...
-
[54]
This is the unclosed term that the Stein closure (Section 4) resolves
+ σ2 2 b(b−1)x a 1xb−2 2 =a x a−1 1 xb+1 2 −bδ x a 1xb 2 −bα x a+1 1 xb−1 2 −bβ x a+2 1 xb−1 2 + σ2 2 b(b−1)x a 1xb−2 2 .(A.35) All terms have degree |α|=a+b except xa+2 1 xb−1 2 , which has degree |α|+ 1 . This is the unclosed term that the Stein closure (Section 4) resolves. 23 G.2 Lotka-Volterra (stochastic predator-prey) SDE.Statex= (x 1, x2)(prey, pr...
-
[55]
This is the highest excess degree among all experimental systems and requirestwoStein closure layers
= 2. This is the highest excess degree among all experimental systems and requirestwoStein closure layers. Generator.Applied toϕ α =x a 1xb 2: Aϕα =a(x 1 −x 3 1)x a−1 1 xb 2 +b(x 2 −x 3 2)x a 1xb−1 2 + σ2 2 a(a−1)x a−2 1 xb 2 +b(b−1)x a 1xb−2 2 .(A.45) Taking expectations: ˙mα =a m α −a m α+2e1 +b m α −b m α+2e2 + σ2 2 a(a−1)m α−2e1 +b(b−1)m α−2e2 .(A.46)...
-
[56]
G.6 SE(2) kinematics SDE.State x= (c, s, p x, py) with c= cosθ , s= sinθ , c2 +s 2 = 1
that couple to the closure at degreeK. G.6 SE(2) kinematics SDE.State x= (c, s, p x, py) with c= cosθ , s= sinθ , c2 +s 2 = 1 . The SDE in embedded coordinates is dc= −ωs− σ2 2 c dt−σs dW, ds= ωc− σ2 2 s dt+σc dW, dpx =vc dt, dp y =vs dt,(A.50) whereωis the angular velocity,vis the forward speed, andσis the heading noise intensity. Drift and diffusion cla...
-
[57]
Moment propagation via Dynkin operates on monomial moments (the generator acts naturally on monomials)
-
[58]
Before score matching: convert monomial moments to the chosen basis using (A.73), or equivalently assemble A, b directly via (A.68)–(A.69) in centered/scaled monomial coordinates (which approximate orthogonality)
-
[59]
For Stein closure during propagation, convert to monomialλvia (A.72) if needed
After score matching: λ is in the working basis. For Stein closure during propagation, convert to monomialλvia (A.72) if needed
-
[60]
For measurement update: the conjugate addition λ+ =λ − +λ lik is performed in whichever basis both are expressed in. H.4 Centered coordinate transformation Given raw moments mα =E[x α] and mean µi =m ei, the centered moments mz α =E[(x−µ) α] are obtained via the multinomial expansion: mz α = X β≤α α β (−µ)α−β mβ,(A.76) where α β =Q i αi βi and µα−β =Q i µ...
-
[61]
produces a parabolic plume that the EKF (Gaussian, symmetric ellipse) cannot represent. SKF propagates 286 centered moments (K=10) and reconstructs the non-Gaussian marginal, matching the 500k-particle MC reference. Moment accuracy: E[z2 3] within 1.3% and E[z3 3] within 3.2% of MC at T=3 (Appendix J.2). Timing: SKF 8 s, MC (500k) 122s, EKF<0.1s. SE(2) lo...
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.