Submitted:
05 January 2025
Posted:
06 January 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Related Works
3. Information Geometry
3.1. Statistical Manifold
3.2. Divergence Measures on Statistical Manifolds
4. Information Geometric Framework for Point Cloud Data
4.1. Covering in the Context of Point Clouds
- Locality: For each subset , there exists an open set containing in X. Mathematically, this can be represented as .
- Overlap: For any two distinct subsets and , their intersection is not necessarily empty, that is for some .
4.2. Statistical Manifold Representation
4.2.1. Gaussian Mixture Model
- Gaussian Distributions: Each Gaussian component in the mixture is defined by its mean and covariance . The probability density function of a Gaussian is given bywhere x is a data point in the point cloud X, m is the dimensionality of the data, and is the determinant of the covariance matrix.
- Mixing Coefficients: These are denoted by for each Gaussian component and they satisfy
- Final Model: The probability density function of the entire mixture model for a data point x in the point cloud X is given byThis is the statistical representation of the point cloud X.
4.2.2. Manifold Structure for Point Clouds
5. Data Overview and Preprocessing
5.1. Basic Geometrical Shapes
5.2. Human and Animal Dataset
5.3. PU-GAN Dataset
6. Computational Foundation
6.1. Sampling
- Initialization: Select an initial point randomly from the point cloud X. Set .
-
Iterative Selection: Choose the point that has maximum distance form . Now choose where , such that gives minimum value for .the sample set U is selected with the required number of points in this way.
- Sample Extraction: Using the above procedure choose 960 samples of 512 points each for both X and Y. Let the sample sets of X and Y be denoted by and .
6.2. Labeling and Data Splitting
6.3. Model Implementation

6.4. Probability Density Function Estimation Using GMM
6.5. Space of Point Clouds as Statistical Manifold

6.6. Modified Symmetric KL Divergence
7. Case Studies
7.1. Comparision of Basic Geometrical Shapes
7.2. Point Cloud Comparison of the Human Body
7.3. Point Cloud Comparison of Animals
7.4. Point Cloud Analysis Using PU-GAN Dataset

8. Conclusion and Future Work
Author Contributions
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| GMM | Gaussian Mixture Model |
| DGCNN | Dynamic Graph Convolutional Neural Network |
| FCNN | Fully Connected Neural Network |
| IGM | Information Geometric Method |
| MSKL | Modified Symmetric Kullback-Leibler |
| EM | Expectation-Maximization |
| FPS | Farthest Point Sampling |
| PU-GAN | Point Cloud Upsampling Generative Adversarial Network |
| Probbaility Density Function |
References
- Amari, S.; Nagaoka, H. Methods of information geometry. Proceedings, 2000. Available online: https://api.semanticscholar.org/CorpusID:116976027.
- Hausdorff, F. Felix Hausdorff—Gesammelte Werke Band III: Mengenlehre (1927, 1935) Deskriptive Mengenlehre und Topologie; Springer Berlin, Heidelberg, 2008; ISBN 978-3-540-76806-7, EISBN 978-3-540-76807-4. [CrossRef]
- Yang, Y.; Feng, C.; Shen, Y.; Tian, D. FoldingNet: Point cloud auto-encoder via deep grid deformation. In Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition; 2018; pp. 206–215. [Google Scholar]
- Mémoli, F.; Sapiro, G. Comparing point clouds. In Proceedings of the 2004 Eurographics/ACM SIGGRAPH Symposium on Geometry Processing; 2004; pp. 32–40. [Google Scholar]
- Rubner, Y.; Tomasi, C.; Guibas, L. J. The Earth Mover’s Distance as a Metric for Image Retrieval. International Journal of Computer Vision, 2000, 40, 99–121. [Google Scholar] [CrossRef]
- Lee, John M. Introduction to Smooth Manifolds. Graduate Texts in Mathematics, Springer New York, 2012.
- Jian, B.; Vemuri, B. C. A robust algorithm for point set registration using mixture of Gaussians. In Proceedings of the Tenth IEEE International Conference on Computer Vision (ICCV’05); 2005; Volume 2, pp. 1246–1251. [Google Scholar]
- Kullback, S.; Leibler, R. A. On Information and Sufficiency. The Annals of Mathematical Statistics 1951, 22(1), 79–86. [Google Scholar] [CrossRef]
- Cramér, H.; Wold, H. O. A. Some Theorems on Distribution Functions. Journal of the London Mathematical Society-second Series, 1936, pp. 290–294. Available online: https://api.semanticscholar.org/CorpusID:122761325.
- Qu, G.; Lee, W. H. Point Set Registration Based on Improved KL Divergence. Scientific Programming, 2021, 2021, 1–8. [Google Scholar] [CrossRef]
- Hammersley, J. Monte Carlo Methods; Springer Science and Business Media, 2013.
- Moenning, C.; Dodgson, N. A. Fast Marching Farthest Point Sampling. University of Cambridge, Computer Laboratory, 2003.
- Lee, Y.; Kim, S.; Choi, J.; Park, F. A statistical manifold framework for point cloud data. In Proceedings of the International Conference on Machine Learning; 2022; pp. 12378–12402. [Google Scholar]
- MPI-FAUST Dataset. Available online: https://faust-leaderboard.is.tuebingen.mpg.de/ (accessed: 2023).
- EPFL Geometry Point Cloud Dataset. Available online: https://www.epfl.ch/labs/mmspg/downloads/geometry-point-cloud-dataset/ (accessed: 2023).
- Li, R.; Li, X.; Fu, C.-W.; Cohen-Or, D.; Heng, P.-A. PU-GAN: A Point Cloud Upsampling Adversarial Network. In Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV); 2019; pp. 7203–7212. [Google Scholar] [CrossRef]
- Jannah, W.; Saputro, D. R. Parameter Estimation of Gaussian Mixture Models (GMM) with Expectation Maximization (EM) Algorithm. AIP Conference Proceedings 2022, 2566(1). [Google Scholar]
- Harsha, K. V.; Moosath, K. S. S. F-Geometry and Amari’s α-Geometry on a Statistical Manifold. Entropy 2014, 16(5), 2472–2487. [Google Scholar] [CrossRef]
- Rao, C. R. Information and the Accuracy Attainable in the Estimation of Statistical Parameters. In Breakthroughs in Statistics, Kotz, S., Johnson, N. L., Eds.; Springer, 1992, pp. 235–247. [CrossRef]
- Kwitt, R.; Uhl, A. Image Similarity Measurement by Kullback-Leibler Divergences between Complex Wavelet Subband Statistics for Texture Retrieval. In Proceedings of the 2008 15th IEEE International Conference on Image Processing; 2008; pp. 933–936. [Google Scholar]

| Sphere (S) | Cone (C) | Cube (U) | |
|---|---|---|---|
| Sphere (S) | Ch = 0 | ||
| H = 0 | |||
| IGM = 0 | |||
| Cone (C) | Ch = 0.6188 | Ch = 0 | |
| H = 1.41 | H = 0 | ||
| IGM = 3.87 | IGM = 0 | ||
| Cube (U) | Ch = 0.8675 | Ch = 1.2016 | Ch = 0 |
| H = 0.9892 | H = 1.501 | H = 0 | |
| IGM = 1.6976 | IGM = 3.75 | IGM = 0 |
| Man1 | Man2 | |
|---|---|---|
![]() |
![]() |
|
![]() |
IGM = 0 H = 0 Ch = 0 |
|
![]() |
IGM = 0.02988 H = 0.2661 Ch = 0.0888 |
IGM = 0 H = 0 Ch = 0 |
| Rabbit | Dragon | |
|---|---|---|
![]() |
IGM = 0 H = 0 Ch = 0 |
|
![]() |
IGM = 0.8552 H = 0.4598 Ch = 0.2779 |
IGM = 0 H = 0 Ch = 0 |
![]() |
![]() |
|
|---|---|---|
![]() |
IGM = 0 H = 0 Ch = 0 |
|
![]() |
IGM = 0.00878 H = 0.1342 Ch = 0.04429 |
IGM = 0 H = 0 Ch = 0 |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).









