Geometric preprocessing and neurocomputing for pattern recognition and pose estimation

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This paper shows the analysis and design of feed-forward neural networks using the coordinate-free system of Clifford or geometric algebra. It is shown that real-, complex- and quaternion-valued neural networks are simply particular cases of the geometric algebra multidimensional neural networks and that they can be generated using Support Multi-Vector Machines. Particularly, the generation of RBF for neurocomputing in geometric algebra is easier using the SMVM that allows to find the optimal parameters automatically. The use of SVM in the geometric algebra framework expands its sphere of applicability for multidimensional learning.We introduce a novel method of geometric preprocessing utilizing hypercomplex or Clifford moments. This method is applied together with geometric MLPs for tasks of 2D pattern recognition. Interesting examples of non-linear problems like the grasping of an object along a non-linear curve and the 3D pose recognition show the effect of the use of adequate Clifford or geometric algebras that alleviate the training of neural networks and that of Support Multi-Vector Machines.

论文关键词:Clifford (geometric) algebra,Geometric learning,Geometric MLPs,Support Multi-Vector Machines (SMVM),Clifford moments,Pattern recognition, Pose and 3D motion

论文评审过程:Received 1 December 2000, Accepted 21 May 2003, Available online 1 August 2003.

论文官网地址:https://doi.org/10.1016/S0031-3203(03)00179-1