Modeling of High-Dimensional Data in Object Recognition
Dariusz Jacek Jakobczak
Citation :Dariusz Jacek Jakobczak, Modeling of High-Dimensional Data in Object Recognition International Journal of Innovative Research in Electronics and Communications 2017,4(1) : 27-41
Proposed method, called Probabilistic Features Combination (PFC), is the method of multidimensional data modeling, extrapolation and interpolation using the set of high-dimensional feature vectors. This method is a hybridization of numerical methods and probabilistic methods. Identification of faces or fingerprints need modeling and each model of the pattern is built by a choice of multi-dimensional probability distribution function and feature combination. PFC modeling via nodes combination and parameter ? as Ndimensional probability distribution function enables data parameterization and interpolation for feature vectors. Multi-dimensional data is modeled and interpolated via nodes combination and different functions as probability distribution functions for each feature treated as random variable: polynomial, sine, cosine, tangent, cotangent, logarithm, exponent, arc sin, arc cos, arc tan, arc cot or power function.