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Supervised classification of geometrical objects by integrating currents and functional data analysis

  • S. Barahona [1] ; P. Centella [1] ; X. Gual-Arnau [1] ; M. V. Ibáñez [1] ; A. Simó
    1. [1] Universitat Jaume I

      Universitat Jaume I

      Castellón, España

  • Localización: Test: An Official Journal of the Spanish Society of Statistics and Operations Research, ISSN-e 1863-8260, ISSN 1133-0686, Vol. 29, Nº. 3, 2020, págs. 637-660
  • Idioma: inglés
  • DOI: 10.1007/s11749-019-00669-z
  • Texto completo no disponible (Saber más ...)
  • Resumen
    • This paper focuses on the application of supervised classification techniques to a set of geometrical objects (bodies) characterized by currents, in particular, discriminant analysis and some nonparametric methods. A current is a relevant mathematical object to model geometrical data, like hypersurfaces, through integration of vector fields over them. As a consequence of the choice of a vector-valued reproducing kernel Hilbert space (RKHS) as a test space to integrate over hypersurfaces, it is possible to consider that hypersurfaces are embedded in this Hilbert space. This embedding enables us to consider classification algorithms of geometrical objects. We present a method to apply supervised classification techniques in the obtained vector-valued RKHS. This method is based on the eigenfunction decomposition of the kernel. The novelty of this paper is therefore the reformulation of a size and shape supervised classification problem in functional data analysis terms using the theory of currents and vector-valued RKHSs. This approach is applied to a 3D database obtained from an anthropometric survey of the Spanish child population with a potential application to online sales of children’s wear.

  • Referencias bibliográficas
    • Alonso AM, Casado D, Romo J (2012) Supervised classification for functional data: a weighted distance approach. Comput Stat Data Anal 56(7):2334–2346
    • Aneiros G, Bongiorno EG, Cao R, Vieu P et al (2017) Functional statistics and related fields. Springer, Berlin
    • Araki Y, Konishi S, Kawano S, Matsui H (2009) Functional logistic discrimination via regularized basis expansions. Commun Stat Theory Methods...
    • Aronszajn N (1950) Theory of reproducing kernels. Trans Am Math Soc 68(3):337–404
    • Ballester A, Valero M, Nácher B, Piérola A, Piqueras P, Sancho M, Gargallo G, González J, Alemany S (2015) 3D body databases of the spanish...
    • Ballester A, Parrilla E, Piérola A, Uriel J, Pérez C, Piqueras P, Vivas J, Alemany S (2016) Data-driven three-dimensional reconstruction of...
    • Barahona S, Gual-Arnau X, Ibáñez M, Simó A (2018) Unsupervised classification of children’s bodies using currents. Adv Data Anal Classif 12(2):365–397
    • Berlinet A, Thomas-Agnan C (2011) Reproducing kernel Hilbert spaces in probability and statistics. Springer, Berlin
    • Berrendero JR, Cuevas A, Torrecilla JL (2018) On the use of reproducing kernel hilbert spaces in functional classification. J Am Stat Assoc...
    • Bickel PJ, Li B, Tsybakov AB, van de Geer SA, Yu B, Valdés T, Rivero C, Fan J, van der Vaart A (2006) Regularization in statistics. Test 15(2):271–344
    • Boj E, Caballé A, Delicado P, Esteve A, Fortiana J (2016) Global and local distance-based generalized linear models. Test 25(1):170–195
    • Bouveyron C, Brunet-Saumard C (2014) Model-based clustering of high-dimensional data: a review. Comput Stat Data Anal 71:52–78
    • Chiou JM, Li PL (2007) Functional clustering and identifying substructures of longitudinal data. J R Stat Soc Ser B (Stat Methodol) 69(4):679–699
    • Cuadras C (1989) Distance analysis in discrimination and classification using both continuous and categorical variables. Statistical data...
    • Cucker F, Smale S (2001) On the mathematical foundations of learning. Am Math Soc 39(1):1–49
    • Cuesta-Albertos JA, Fraiman R (2007) Impartial trimmed k-means for functional data. Comput Stat Data Anal 51(10):4864–4877
    • Cuevas A (2014) A partial overview of the theory of statistics with functional data. J Stat Plan Inference 147:1–23
    • Cuevas A, Febrero M, Fraiman R (2007) Robust estimation and classification for functional data via projection-based depth notions. Comput...
    • Dai X, Müller HG et al (2018) Principal component analysis for functional data on riemannian manifolds and spheres. Ann Stat 46(6B):3334–3361
    • Delicado P (2007) Functional k-sample problem when data are density functions. Comput Stat 22(3):391–410
    • Delicado P (2011) Dimensionality reduction when data are density functions. Comput Stat Data Anal 55(1):401–420
    • Delicado P, Vieu P (2017) Choosing the most relevant level sets for depicting a sample of densities. Comput Stat 32(3):1083–1113
    • Devarajan P, Istook CL (2004) Validation of female figure identification technique (FFIT) for apparel software. J Text Appar Technol Manag...
    • Di Marzio M, Fensore S, Panzera A, Taylor CC (2019) Kernel density classification for spherical data. Stat Probab Lett 144:23–29
    • Dryden IL, Mardia KV (2016) Statistical shape analysis: with applications. Wiley, Hoboken
    • Durrleman S (2010) Statistical models of currents for measuring the variability of anatomical curves, surfaces and their evolution. Ph.D....
    • Durrleman S, Pennec X, Trouvé A, Ayache N (2009) Statistical models of sets of curves and surfaces based on currents. Med Image Anal 13(5):793–808
    • Eubank R, Hsing T (2008) Canonical correlation for stochastic processes. Stoch Process Their Appl 118(9):1634–1661
    • Federer H, Fleming W (1960) Normal and integral currents. Ann Math 72:458–520
    • Ferraty F, Vieu P (2006) Nonparametric functional data analysis: theory and practice. Springer, Berlin
    • Fisher R (1936) The use of multiple measurements in taxonomic problems. Ann Eugen 7(2):179–188
    • Flores M, Gual-Arnau X, Ibáñez M, Simó A (2016) Intrinsic sample mean in the space of planar shapes. Pattern Recognit 60:164–176
    • Fraiman R, Gamboa F, Moreno L (2019) Connecting pairwise geodesic spheres by depth: DCOPS. J Multivar Anal 169:81–94
    • Garcia-Escudero LA, Gordaliza A (2005) A proposal for robust curve clustering. J Classif 22(2):185–201
    • Gerber S, Tasdizen T, Whitaker R (2009) Dimensionality reduction and principal surfaces via kernel map manifolds. In: IEEE 12th international...
    • Glaunès J, Joshi S (2006) Template estimation form unlabeled point set data and surfaces for computational anatomy. In: 1st MICCAI Workshop...
    • Goia A, Vieu P (2016) An introduction to recent advances in high/infinite dimensional statistics. J Multivar Anal 146:1–6
    • González J, Muñoz A (2010) Representing functional data in reproducing kernel hilbert spaces with applications to clustering and classification....
    • Hall P, Poskitt D, Presnell B (2001) A functional data-analytic approach to signal discrimination. Technometrics 43(1):1–9
    • Horváth L, Kokoszka P (2012) Inference for functional data with applications, vol 200. Springer, Berlin
    • Hsing T, Eubank R (2015) Theoretical foundations of functional data analysis, with an introduction to linear operators. Wiley, Hoboken
    • Jacques J, Preda C (2014) Functional data clustering: a survey. Adv Data Anal Classif 8(3):231–255
    • James G, Hastie T (2001) Functional linear discriminant analysis for irregularly sampled curves. J R Stat Soc Ser B (Stat Methodol) 63(3):533–550
    • Kadri H, Duflos E, Preux P, Canu S, Rakotomamonjy A, Audiffren J (2016) Operator-valued kernels for learning from functional response data....
    • Kendall D, Barden D, Carne T, Le H (2009) Shape and shape theory, vol 500. Wiley, Hoboken
    • Kent JT, Mardia KV, Morris RJ, Aykroyd RG (2001) Functional models of growth for landmark data. In: Proceedings in functional and spatial...
    • Kneip A, Utikal KJ (2001) Inference for density families using functional principal component analysis. J Am Stat Assoc 96(454):519–542
    • Kupresanin A, Shin H, King D, Eubank R (2010) An rkhs framework for functional data analysis. J Stat Plan Inference 140(12):3627–3637
    • Lian H (2007) Nonlinear functional models for functional responses in reproducing kernel hilbert spaces. Can J Stat 35(4):597–606
    • Lin L, St Thomas B, Zhu H, Dunson DB (2017) Extrinsic local regression on manifold-valued data. J Am Stat Assoc 112(519):1261–1273
    • López-Pintado S, Romo J (2009) On the concept of depth for functional data. J Am Stat Assoc 104(486):718–734
    • Loubes JM, Pelletier B (2008) A kernel-based classifier on a riemannian manifold. Stat Decis Int Math J Stoch Methods Models 26(1):35–51
    • Lukić M, Beder J (2001) Stochastic processes with sample paths in reproducing kernel hilbert spaces. Trans Am Math Soc 353(10):3945–3969
    • Marron JS, Alonso AM (2014) Overview of object oriented data analysis. Biom J 56(5):732–753
    • MATLAB (2015) version 8.6.0 (R2015b). The MathWorks Inc., Natick, MA
    • Meunier P (2000) Use of body shape information in clothing size selection. In: Proceedings of the human factors and ergonomics society annual...
    • Müller HG (2005) Functional modelling and classification of longitudinal data. Scand J Stat 32(2):223–240
    • Pelletier B (2006) Non-parametric regression estimation on closed Riemannian manifolds. J Nonparametric Stat 18(1):57–67
    • Peng J, Müller HG et al (2008) Distance-based clustering of sparsely observed stochastic processes, with applications to online auctions....
    • Pennec X (2006) Intrinsic statistics on Riemannian manifolds: basic tools for geometric measurements. J Math Imaging Vis 25(1):127–154
    • Preda C (2007) Regression models for functional data by reproducing kernel hilbert spaces methods. J Stat Plan Inference 137(3):829–840
    • Preda C, Saporta G, Lévéder C (2007) PLS classification of functional data. Comput Stat 22(2):223–235
    • Quang M, Kang S, Le T (2010) Image and video colorization using vector-valued reproducing kernel Hilbert spaces. J Math Imaging Vis 37(1):49–65
    • R Core Team (2018) R: A language and environment for statistical computing. R Foundation for Statistical Computing, Vienna, Austria. https://www.R-project.org/
    • Rham Gd (1960) Variétés différentiables. Formes, courants, formes harmoniques. Hermann et Cie, Butterworths Scientific Publications, Hermann
    • Ripley B (2007) Pattern recognition and neural networks. Cambridge University Press, Cambridge
    • Rossi F, Villa N (2008) Recent advances in the use of svm for functional data classification. Functional and operatorial statistics. Springer,...
    • Saitoh S, Sawano Y (2016) Theory of reproducing kernels and applications. Springer, Berlin
    • Schölkopf B, Smola AJ, Bach F et al (2002) Learning with kernels: support vector machines, regularization, optimization, and beyond. MIT Press,...
    • Senkene E, Tempel’man A (1973) Hilbert spaces of operator-valued functions. Math Trans Acad Sci Lith SSR 13(4):665–670
    • Serra J (1982) Image analysis and mathematical morphology. Academic Press, Cambridge
    • Shin H (2008) An extension of Fisher’s discriminant analysis for stochastic processes. J Multivar Anal 99(6):1191–1216
    • Silverman B, Ramsay J (2005) Functional data analysis. Springer, Berlin
    • Smale S, Zhou DX (2009) Geometry on probability spaces. Constr Approx 30(3):311–323
    • Stoyan D, Stoyan H (1994) Fractals, random shapes and point fields. Methods of geometrical statistics. Wiley, Hoboken
    • Tenenbaum JB, De Silva V, Langford JC (2000) A global geometric framework for nonlinear dimensionality reduction. Science 290(5500):2319–2323
    • Turaga PK, Srivastava A (2016) Riemannian computing in computer vision. Springer, Berlin
    • Vaillant M, Glaunès J (2005) Surface matching via currents. Information processing in medical imaging. Springer, Berlin, pp 381–392
    • Viktor HL, Paquet E, Guo H (2006) Measuring to fit: virtual tailoring through cluster analysis and classification. In: European conference...
    • Vinué G, Simó A, Alemany S (2016) The k-means algorithm for 3D shapes with an application to apparel design. Adv Data Anal Classif 10(1):103–132
    • Wang H, Marron J et al (2007) Object oriented data analysis: sets of trees. Ann Stat 35(5):1849–1873
    • Wang JL, Chiou JM, Müller HG (2016) Functional data analysis. Ann Rev Stat Its Appl 3:257–295
    • Younes L (1998) Computable elastic distance between shapes. SIAM J Appl Math 58(2):565–586

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