scholarly journals A Novel Two-Stage Spectrum-Based Approach for Dimensionality Reduction: A Case Study on the Recognition of Handwritten Numerals

2014 ◽  
Vol 2014 ◽  
pp. 1-14 ◽  
Author(s):  
Mohammad Amin Shayegan ◽  
Saeed Aghabozorgi ◽  
Ram Gopal Raj

Dimensionality reduction (feature selection) is an important step in pattern recognition systems. Although there are different conventional approaches for feature selection, such as Principal Component Analysis, Random Projection, and Linear Discriminant Analysis, selecting optimal, effective, and robust features is usually a difficult task. In this paper, a new two-stage approach for dimensionality reduction is proposed. This method is based on one-dimensional and two-dimensional spectrum diagrams of standard deviation and minimum to maximum distributions for initial feature vector elements. The proposed algorithm is validated in an OCR application, by using two big standard benchmark handwritten OCR datasets, MNIST and Hoda. In the beginning, a 133-element feature vector was selected from the most used features, proposed in the literature. Finally, the size of initial feature vector was reduced from 100% to 59.40% (79 elements) for the MNIST dataset, and to 43.61% (58 elements) for the Hoda dataset, in order. Meanwhile, the accuracies of OCR systems are enhanced 2.95% for the MNIST dataset, and 4.71% for the Hoda dataset. The achieved results show an improvement in the precision of the system in comparison to the rival approaches, Principal Component Analysis and Random Projection. The proposed technique can also be useful for generating decision rules in a pattern recognition system using rule-based classifiers.

2021 ◽  
Vol 336 ◽  
pp. 06034
Author(s):  
Ke Xi ◽  
Cheng Cai

In this article, we propose an optimization algorithm for the original LMC [1] (Large Margin Classifier). We use PCA [2] (Principal Component Analysis) to reduce the dimensionality of the images, and then put the data after dimensionality reduction into the optimized LMC for the feature selection [3]. We will get several features with the greatest distinction. We use these features to classify images. Finally, the experiment shows that the accuracy of the optimized LMC under the same dimensions is higher than that of the original LMC, and in many cases, the accuracy of the optimized LMC after taking 6 feature vectors has exceeded the highest accuracy of the original LMC.


2019 ◽  
Author(s):  
Fagner Macêdo ◽  
Gabriel Barbosa ◽  
Ajalmar Neto

Neste trabalho, o problema de seleção de características é abordado através da introdução de uma nova versão binária para o algoritmo Water Wave Optimization (WWO), chamada Binary Water Wave Optimization (BWWO). O WWO, em sua versão original, é utilizado apenas para resolver problemas de otimização contínuos. O método aqui proposto combina as características de otimização presentes no WWO juntamente com a velocidade de treinamento do algoritmo Optimum-Path Forest (OPF) a fim de providenciar um framework capaz de resolver problemas de seleção de características, que são problemas discretos, de forma eficaz. Para avaliar o desempenho do BWWO, uma análise comparativa é feita com métodos clássicos de redução de dimensionalidade, mais especificamente com Principal Component Analysis (PCA) e Linear Discriminant Analysis (LDA). Com base nos experimentos, pode-se afirmar que BWWO é uma alternativa válida para problemas de seleção de características.


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