image thumbnail

updated 17 days ago

Pattern Recognition Toolbox by Peter

Peter (view profile)

Free pattern recognition toolbox for MATLAB (machine learning, pattern recognition, svm)

image thumbnail

updated 2 months ago

Linear Discriminant Analysis (LDA) aka. Fisher Discriminant Analysis (FDA) by Yarpiz

Yarpiz (view profile)

Implemenatation of LDA in MATLAB for dimensionality reduction and linear feature extraction (linear discriminant a..., fisher discriminant a..., lda)



image thumbnail

updated 12 months ago

LDA for high dimension small sample size data by Bilwaj Gaonkar

Linear discriminant analysis when the data dimensionality is high and sample size is much smaller (medical, image analysis, signal processing)


image thumbnail

updated almost 2 years ago

Uncorrelated Multilinear Discriminant Analysis (UMLDA) by Haiping Lu

Haiping Lu (view profile)

The codes implement the Uncorrelated Multilinear Discriminant Analysis (UMLDA) algorithm. (dimensionality reduct..., face recognition, feature extraction)




image thumbnail

updated 2 years ago

Direct LDA and PCA+LDA by Vipin Vijayan

Vipin Vijayan (view profile)

Implementation of LDA, Direct LDA and PCA+LDA. See description for details. (linear discriminant a..., lda, fischers linear discr...)



fld(X, L, n, crit, qrf, r, e, M )

image thumbnail

updated 3 years ago

Fischer Linear Dicriminant Analysis by Sergios Petridis

find the discriminative susbspace for samples using fischer linear dicriminant analysis (statistics, machine learning, pattern recognition)

fld(X, L, n, crit, qrf, r, e, M )

image thumbnail

updated 3 years ago

LDA by Adeel

Adeel (view profile)

Linear Discriminent Analysis by using the example of a flower. (lda, image recognition, image processing)


image thumbnail

updated 3 years ago

American Sign Language Detection using PCA and LDA by Neeraj

Neeraj (view profile)

Provides scripts for testing the two algorithms as well as testing real time input. (american sign languag..., pca, lda)




image thumbnail

updated almost 4 years ago

The PhD face recognition toolbox by Vitomir Struc

Vitomir Struc (view profile)

Useful functions for face recognition research. (face recognition, image processing, biometrics)




image thumbnail

updated 4 years ago

Linear Discriminant Analysis Code by Muhammet

Muhammet (view profile)

this function converts data from its original space to LDA space. (lda, linear discriminant, multi class)


image thumbnail

updated 4 years ago

Feature Analysis by Iftekhar Tanveer

This program analyzes an arff file (weka) (pca, lda, feature selection)



image thumbnail

updated 4 years ago

supervised NPE(neighborhood preserving embedding) subspace for dimension reduction by Ke Yan

Ke Yan (view profile)

compute the supervised NPE(neighborhood preserving embedding) subspace for dimension reduction. (npe, supervised, subspace)


image thumbnail

updated 4 years ago

LDA (Linear Discriminant Analysis) by Alaa Tharwat

Alaa Tharwat (view profile)

This code used to learn and explain the code of LDA to apply this code in many applications. (lda)


image thumbnail

updated almost 5 years ago

LDA: Linear Discriminant Analysis by Will Dwinnell

Performs linear discriminant analysis. (statistics, lda, linear discriminant)


image thumbnail

updated 6 years ago

Alaa Tharwat ToolBox by Alaa Tharwat

Alaa Tharwat (view profile)

This toolBox used in the image processing(feature extraction and classification) (toolbox, image processing, pca)




image thumbnail

updated 7 years ago

2DLDA PK LDA for feature extraction by zhizheng Liang

A comparision of 2DLDA and LDA (application, feature extraction, 2dlda)

ADM1(TrainSet,TrainLabel,TestSet,TestLabel, R,L,r,c,mm)

ADM2(TrainSet,TrainLabel,TestSet,TestLabel, R,r,c,mm)

Fnorm1(TrainSet,TrainLabel,TestSet,TestLabel, R,L,r,c)

image thumbnail

updated 16 years ago

discrim by Michael Kiefte

This is version 0.3 of the Discriminant Analysis Toolbox with major bug fixes. (statistics, probability, discriminant)

confmat(c, d)

crossval(rule, X, k, v)

mahalanobis(X, Mu, C)

Contact us