Rigid and Articulated Point Registration with Expectation Conditional
Maximization
- URL: http://arxiv.org/abs/2012.05191v1
- Date: Wed, 9 Dec 2020 17:36:11 GMT
- Title: Rigid and Articulated Point Registration with Expectation Conditional
Maximization
- Authors: Radu Horaud, Florence Forbes, Manuel Yguel, Guillaume Dewaele, and
Jian Zhang
- Abstract summary: We introduce an innovative EM-like algorithm, namely the Conditional Expectation Maximization for Point Registration (ECMPR) algorithm.
We analyse in detail the associated consequences in terms of estimation of the registration parameters.
We extend rigid registration to articulated registration.
- Score: 20.096170794358315
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper addresses the issue of matching rigid and articulated shapes
through probabilistic point registration. The problem is recast into a missing
data framework where unknown correspondences are handled via mixture models.
Adopting a maximum likelihood principle, we introduce an innovative EM-like
algorithm, namely the Expectation Conditional Maximization for Point
Registration (ECMPR) algorithm. The algorithm allows the use of general
covariance matrices for the mixture model components and improves over the
isotropic covariance case. We analyse in detail the associated consequences in
terms of estimation of the registration parameters, and we propose an optimal
method for estimating the rotational and translational parameters based on
semi-definite positive relaxation. We extend rigid registration to articulated
registration. Robustness is ensured by detecting and rejecting outliers through
the addition of a uniform component to the Gaussian mixture model at hand. We
provide an in-depth analysis of our method and we compare it both theoretically
and experimentally with other robust methods for point registration.
Related papers
- SPARE: Symmetrized Point-to-Plane Distance for Robust Non-Rigid Registration [76.40993825836222]
We propose SPARE, a novel formulation that utilizes a symmetrized point-to-plane distance for robust non-rigid registration.
The proposed method greatly improves the accuracy of non-rigid registration problems and maintains relatively high solution efficiency.
arXiv Detail & Related papers (2024-05-30T15:55:04Z) - Regularized Projection Matrix Approximation with Applications to Community Detection [1.3761665705201904]
This paper introduces a regularized projection matrix approximation framework designed to recover cluster information from the affinity matrix.
We investigate three distinct penalty functions, each specifically tailored to address bounded, positive, and sparse scenarios.
Numerical experiments conducted on both synthetic and real-world datasets reveal that our regularized projection matrix approximation approach significantly outperforms state-of-the-art methods in clustering performance.
arXiv Detail & Related papers (2024-05-26T15:18:22Z) - A Unified Theory of Stochastic Proximal Point Methods without Smoothness [52.30944052987393]
Proximal point methods have attracted considerable interest owing to their numerical stability and robustness against imperfect tuning.
This paper presents a comprehensive analysis of a broad range of variations of the proximal point method (SPPM)
arXiv Detail & Related papers (2024-05-24T21:09:19Z) - Robust scalable initialization for Bayesian variational inference with
multi-modal Laplace approximations [0.0]
Variational mixtures with full-covariance structures suffer from a quadratic growth due to variational parameters with the number of parameters.
We propose a method for constructing an initial Gaussian model approximation that can be used to warm-start variational inference.
arXiv Detail & Related papers (2023-07-12T19:30:04Z) - Overlap-guided Gaussian Mixture Models for Point Cloud Registration [61.250516170418784]
Probabilistic 3D point cloud registration methods have shown competitive performance in overcoming noise, outliers, and density variations.
This paper proposes a novel overlap-guided probabilistic registration approach that computes the optimal transformation from matched Gaussian Mixture Model (GMM) parameters.
arXiv Detail & Related papers (2022-10-17T08:02:33Z) - GiNGR: Generalized Iterative Non-Rigid Point Cloud and Surface
Registration Using Gaussian Process Regression [7.072699623549853]
GiNGR builds upon Gaussian Process Morphable Models (GPMM)
We show how GPR can warp a reference onto a target, leading to smooth deformations following the prior for any dense, sparse, or partial estimated correspondences.
We show how existing algorithms in the GiNGR framework can perform probabilistic registration to obtain a distribution of different registrations.
arXiv Detail & Related papers (2022-03-18T14:23:49Z) - A Stochastic Newton Algorithm for Distributed Convex Optimization [62.20732134991661]
We analyze a Newton algorithm for homogeneous distributed convex optimization, where each machine can calculate gradients of the same population objective.
We show that our method can reduce the number, and frequency, of required communication rounds compared to existing methods without hurting performance.
arXiv Detail & Related papers (2021-10-07T17:51:10Z) - Effective multi-view registration of point sets based on student's t
mixture model [15.441928157356477]
This paper proposes an effective registration method based on Student's t Mixture Model (StMM)
It is more efficient to achieve multi-view registration since all t-distribution centroids can be obtained by the NN search method.
Experimental results illustrate its superior performance and accuracy over state-of-the-art methods.
arXiv Detail & Related papers (2020-12-13T08:27:29Z) - Amortized Conditional Normalized Maximum Likelihood: Reliable Out of
Distribution Uncertainty Estimation [99.92568326314667]
We propose the amortized conditional normalized maximum likelihood (ACNML) method as a scalable general-purpose approach for uncertainty estimation.
Our algorithm builds on the conditional normalized maximum likelihood (CNML) coding scheme, which has minimax optimal properties according to the minimum description length principle.
We demonstrate that ACNML compares favorably to a number of prior techniques for uncertainty estimation in terms of calibration on out-of-distribution inputs.
arXiv Detail & Related papers (2020-11-05T08:04:34Z) - Variable selection for Gaussian process regression through a sparse
projection [0.802904964931021]
This paper presents a new variable selection approach integrated with Gaussian process (GP) regression.
The choice of tuning parameters and the accuracy of the estimation are evaluated with the simulation some chosen benchmark approaches.
arXiv Detail & Related papers (2020-08-25T01:06:10Z) - DeepGMR: Learning Latent Gaussian Mixture Models for Registration [113.74060941036664]
Point cloud registration is a fundamental problem in 3D computer vision, graphics and robotics.
In this paper, we introduce Deep Gaussian Mixture Registration (DeepGMR), the first learning-based registration method.
Our proposed method shows favorable performance when compared with state-of-the-art geometry-based and learning-based registration methods.
arXiv Detail & Related papers (2020-08-20T17:25:16Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.