H.3.7. Learning
Tree Bark Classification using Color-improved Local Quinary Pattern and Stacked MEETG

Laleh Armi; Elham Abbasi

Volume 11, Issue 3 , July 2023, , Pages 391-405

https://doi.org/10.22044/jadm.2023.12692.2420

Abstract
  In this paper, we propose an innovative classification method for tree bark classification and tree species identification. The proposed method consists of two steps. In the first step, we take the advantages of ILQP, a rotationally invariant, noise-resistant, and fully descriptive color texture feature ...  Read More

Feature Selection based on Particle Swarm Optimization and Mutual Information

Z. Shojaee; Seyed A. Shahzadeh Fazeli; E. Abbasi; F. Adibnia

Volume 9, Issue 1 , January 2021, , Pages 39-44

https://doi.org/10.22044/jadm.2020.8857.2020

Abstract
  Today, feature selection, as a technique to improve the performance of the classification methods, has been widely considered by computer scientists. As the dimensions of a matrix has a huge impact on the performance of processing on it, reducing the number of features by choosing the best subset of ...  Read More