Image Recognition Using Unsupervised Learning Based Automatic Fuzzy Clustering Algorithm

Master'sLe Thi Kim NgocVV. Tai

Faculty of Engineering

Research output: Proceeding

researchs.abstract

This article proposes a novel techniques for unsupervised learning in image recognition using automatic fuzzy clustering algorithm (AFCA) for discrete data. There are two main stages in order to recognize images in this study. First of all, new technique is shown to extract sixty four textural features from n images represented by a matrix n ´ 64. Afterwards, we use the proposed method based on Hausdorff distance to simultaneously determine the appropriate number of clusters. At the end of the unsupervised clustering process, discrete data belonging to the same cluster converge to the same position, which represents the cluster's center. After determining number of cluster, we have probability of assigning objects to the established clusters. The simulation result built by Matlab program shows the effectiveness of the proposed method using the corrected rand, the partition entropy, and the partition coefficients index. The experimental outcomes illustrate that the proposed method is better than the existing ones as Fuzzy C-mean. As a result, we believe that the prop.

Overview
Type
Proceeding
Publication year
02 Dec 2020
Original language
English

Access Document Overview

To read the full-text of this publication, you can request a copy directly from the authors.