Kernel-based classification using quantum mechanics

作者:

Highlights:

摘要

This paper introduces a new nonparametric estimation approach inspired from quantum mechanics. Kernel density estimation associates a function to each data sample. In classical kernel estimation theory the probability density function is calculated by summing up all the kernels. The proposed approach assumes that each data sample is associated with a quantum physics particle that has a radial activation field around it. Schrödinger differential equation is used in quantum mechanics to define locations of particles given their observed energy level. In our approach, we consider the known location of each data sample and we model their corresponding probability density function using the analogy with the quantum potential function. The kernel scale is estimated from distributions of K-nearest neighbours statistics. In order to apply the proposed algorithm to pattern classification we use the local Hessian for detecting the modes in the quantum potential hypersurface. Each mode is assimilated with a nonparametric class which is defined by means of a region growing algorithm. We apply the proposed algorithm on artificial data and for the topography segmentation from radar images of terrain.

论文关键词:Kernel density estimation,Nonparametric modelling,Quantum mechanics,Vector field segmentation

论文评审过程:Received 12 October 2005, Revised 26 July 2006, Accepted 15 August 2006, Available online 10 October 2006.

论文官网地址:https://doi.org/10.1016/j.patcog.2006.08.011