Chiabwoot Ratanavilisagul. Modified feature selection with BPSO to apply PSO for solving handwritten digits. (). King Mongkut's University of Technology North Bangkok. Central Library. : , 2024.
Modified feature selection with BPSO to apply PSO for solving handwritten digits
Abstract:
The task of Handwriting Digits Recognition
represents a classification challenge involving the
interpretation of handwritten digits sourced from diverse
mediums such as paper, photos, touch screens, and other
devices. This challenge is very intricate due to the
distinctiveness of each individual's handwriting, and several
essential traits that influence the interpretation process.
Numerous researchers have devoted efforts to solve this
problem. Recent research has improved preprocessing and
feature extraction techniques by using particle swarm
optimization to address the handwritten digit recognition
problem. The outcomes of these experiments have shown
obtain good results. Nevertheless, outcomes from this
technique can be further improved. The feature selection
technique popularly applies pattern recognition to improve
outcomes. Thus, this study proposes a modified feature
selection technique that developed from binary particle swarm
optimization to optimize particle swarm optimization for
handwritten digit recognition. This proposed feature selection
technique has demonstrated the potential to yield higher
Recognition Rates significantly in both training and testing
phases. Comparative analysis against the original technique,
devoid of the feature selection technique, reveals that the
proposed method exhibits superior Recognition Rates when
tested on both the original MNIST datasets and the
individual's each person handwritten digit datasets
King Mongkut's University of Technology North Bangkok. Central Library
Address:
BANGKOK
Email:
library@kmutnb.ac.th
Created:
2024
Modified:
2025-02-05
Issued:
2025-02-05
บทความ/Article
application/pdf
BibliograpyCitation :
In Rajamangala University of Technology Krungthep. 12th International Electrical Engineering Congress (iEECON 2024) (pp.714-719). Bangkok : Rajamangala University of Technology Krungthep