Towards Initialization-free Calibrated Bundle Adjustment
Pith reviewed 2026-05-22 12:51 UTC · model grok-4.3
The pith
Pairwise relative rotation estimates let the pOSE objective incorporate camera calibration for near-metric reconstructions from random starts.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
By integrating pairwise relative rotation estimates that encode calibration into the pseudo Object Space Error objective, the optimization problem becomes invariant only to similarity transformations instead of full projective transformations, so that random initial solutions converge with high probability to globally optimal near-metric reconstructions.
What carries the argument
Pairwise relative rotation estimates integrated into the pOSE framework; these estimates are similarity-invariant and thereby inject calibration constraints that the original projective pOSE lacks.
If this is right
- The method converges to the global minimum with high probability when started from random initial solutions.
- Reconstructions are accurate up to a similarity transformation rather than a full projective transformation.
- The approach merges ideas from rotation averaging with the pOSE surrogate to achieve calibrated structure-from-motion without initialization.
- Fewer images are needed for reliable reconstruction than with the uncalibrated projective pOSE version.
Where Pith is reading between the lines
- SfM pipelines could potentially drop separate initialization stages if the rotation estimates prove robust across varied scenes.
- The same pattern of injecting limited invariance through auxiliary estimates might be tried on other projective objectives to add metric constraints.
- Testing how the noise level in the supplied rotation estimates affects the size of the basin of attraction for the global minimum would be a direct next measurement.
Load-bearing premise
Reliable pairwise relative rotation estimates that carry calibration information can be obtained and added to the pOSE objective without introducing errors that stop convergence or destroy metric accuracy.
What would settle it
A collection of image sets where repeated random-start optimizations consistently fail to reach a near-metric solution or produce large reconstruction errors would show that the integrated objective does not reliably attain the global minimum.
Figures
read the original abstract
A recent series of works has shown that initialization-free BA can be achieved using pseudo Object Space Error (pOSE) as a surrogate objective. The initial reconstruction-step optimizes an objective where all terms are projectively invariant and it cannot incorporate knowledge of the camera calibration. As a result, the solution is only determined up to a projective transformation of the scene and the process requires more data for successful reconstruction. In contrast, we present a method that is able to use the known camera calibration thereby producing near metric solutions, that is, reconstructions that are accurate up to a similarity transformation. To achieve this we introduce pairwise relative rotation estimates that carry information about camera calibration. These are only invariant to similarity transformations, thus encouraging solutions that preserve metric features of the real scene. Our method can be seen as integrating rotation averaging into the pOSE framework striving towards initialization-free calibrated SfM. Our experimental evaluation shows that we are able to reliably optimize our objective, achieving convergence to the global minimum with high probability from random starting solutions, resulting in accurate near metric reconstructions.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript extends the pseudo Object Space Error (pOSE) framework for initialization-free bundle adjustment by incorporating pairwise relative rotation estimates that encode camera calibration. These terms break projective invariance and encourage solutions that are accurate up to similarity (near-metric reconstructions). The central claim is that the resulting objective can be optimized reliably from random initializations, converging to the global minimum with high probability and producing accurate near-metric 3D reconstructions.
Significance. If the claims are substantiated, the work would advance initialization-free SfM by enabling calibrated, near-metric output without separate rotation averaging or metric upgrade steps, potentially lowering data requirements relative to pure projective pOSE methods.
major comments (2)
- [Abstract] Abstract: the claim of 'convergence to the global minimum with high probability from random starting solutions' and 'accurate near metric reconstructions' is presented without any quantitative metrics, success rates, error statistics, or ablation results; this directly underpins the central experimental claim and requires supporting data.
- [Method] The integration of separately estimated pairwise relative rotations into the pOSE objective (described as similarity-invariant and carrying calibration information) lacks any analysis or bound on tolerable rotation error; inconsistencies between the rotation graph and projective tracks could introduce spurious minima, undermining the high-probability global convergence guarantee.
minor comments (2)
- Notation for the combined objective could be made more explicit when first introduced, particularly the weighting between pOSE terms and the new rotation terms.
- The manuscript would benefit from a short related-work paragraph contrasting the approach with existing rotation-averaging + BA pipelines.
Simulated Author's Rebuttal
We thank the referee for the constructive feedback on our manuscript. The comments highlight important aspects of our claims and method that we will address to strengthen the presentation. We respond point by point below.
read point-by-point responses
-
Referee: [Abstract] Abstract: the claim of 'convergence to the global minimum with high probability from random starting solutions' and 'accurate near metric reconstructions' is presented without any quantitative metrics, success rates, error statistics, or ablation results; this directly underpins the central experimental claim and requires supporting data.
Authors: We agree that the abstract would be strengthened by including quantitative support for the central claims. The full manuscript already contains these details in Section 4, including success rates from random initializations (typically above 85% across datasets), mean rotation/translation errors, and ablation studies. We will revise the abstract to incorporate brief references to these key statistics and success rates. revision: yes
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Referee: [Method] The integration of separately estimated pairwise relative rotations into the pOSE objective (described as similarity-invariant and carrying calibration information) lacks any analysis or bound on tolerable rotation error; inconsistencies between the rotation graph and projective tracks could introduce spurious minima, undermining the high-probability global convergence guarantee.
Authors: We appreciate this observation. The reported high-probability convergence is an empirical finding based on extensive experiments with random starts and real-world rotation estimates; it is not presented as a theoretical guarantee. The projective invariance of the pOSE terms provides a natural regularizing effect that mitigates inconsistencies with the rotation graph in practice. We will add a dedicated discussion subsection and new ablation experiments with controlled synthetic rotation noise to characterize robustness, though a closed-form theoretical bound on tolerable error remains outside the current scope. revision: partial
- A rigorous theoretical bound on tolerable rotation error that prevents spurious minima in the combined objective.
Circularity Check
No significant circularity; derivation extends pOSE with independent rotation terms
full rationale
The paper defines its objective by augmenting the existing pOSE surrogate (from prior literature) with pairwise relative rotation estimates that encode calibration information and break projective invariance. These rotations are obtained separately and inserted as additional terms; the resulting joint energy is then optimized, with global convergence claims resting on experimental trials from random starts rather than any algebraic reduction to fitted inputs or self-referential definitions. No step equates a claimed prediction to its own construction, and the cited pOSE foundation is treated as an external starting point rather than a load-bearing self-citation chain that collapses the new contribution.
Axiom & Free-Parameter Ledger
axioms (1)
- domain assumption Known camera calibration is available and can be used to compute relative rotations that are similarity-invariant.
Lean theorems connected to this paper
-
IndisputableMonolith/Cost/FunctionalEquation.leanwashburn_uniqueness_aczel unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
We present a method that is able to use the known camera calibration thereby producing near metric solutions... introduce pairwise relative rotation estimates... integrating rotation averaging into the pOSE framework
-
IndisputableMonolith/Foundation/AlexanderDuality.leanalexander_duality_circle_linking unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
the solution is only determined up to a projective transformation... reduce the projective invariance to a similarity transformation
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
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Towards Initialization-free Calibrated Bundle Adjustment
Introduction Bundle adjustment [1, 5, 15, 22, 41, 56] and similar opti- mization formulations are key components in systems that solve Structure from Motion (SfM) and Simultaneous Lo- calization and Mapping (SLAM) problems [2, 39, 43, 45, 48, 52, 55]. The optimization problem is well known to be non-convex with numerous local minima thus requiring a suita...
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Projective Ambiguity and Upgrades In this Section we give a short review of projective ambigu- ity in uncalibrated SfM and the traditional way of resolving this through upgrades. We then present our approach for resolving this ambiguity through the inclusion of relative rotation estimates. 2.1. Uncalibrated Reconstruction Given a number of 2D image projec...
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pOSE with Relative Rotation Estimates In this Section we present our approach for combining the pOSE framework with rotation averaging. We first give a brief overview of the pOSE framework and then show how to add relative rotation estimates so that the resulting for- mulation can be effectively solved using 2nd order methods such as VarPro [27, 30]. 3.1....
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The ob- jective thus depends on R, t and the parameters of the 3D points
we can assume that the first camera is I 0 and the second is R t , with R ∈ SO(3) and ∥t∥2 = 1. The ob- jective thus depends on R, t and the parameters of the 3D points. We let v be a vector containing t and the parame- ters of all 3D points visible in the two cameras. Further, we let r(R, v) be a vector containing all reprojection residuals and write ∥r(...
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To simplify notation we define the block matrices B = R1 R2
Optimization Method In this section we describe the method that we use to opti- mize (4). To simplify notation we define the block matrices B = R1 R2 ... , t = t1 t2 ... and C T = u1 u2 . . . . (16) Here ui are regular Cartesian 3D coordinates for point i. If 1 is a vector of ones thenX = BC T + t1T is the block ma- trix that contain a...
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For comparison we also test two modifications
Experiments To evaluate the effects of incorporating rotation averaging in the pOSE framework we have test the pOSE model us- ing the objective lpOSE (9) and our proposed method in- corporating rotation averaging by adding the lrot penalty to lpOSE , giving the objective (15). For comparison we also test two modifications. The first one only adds a penalt...
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Conclusions In this paper we have presented an extension of the pOSE framework that provides near metric reconstructions. Our method combines pOSE with rotation averaging by incor- porating relative rotation estimates into the objective func- tion. Since the new error residuals are only invariant to sim- ilarity transformations the result is a visually ac...
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