International Journal of Science and Research (IJSR)

International Journal of Science and Research (IJSR)
www.ijsr.net | Most Trusted Research Journal Since Year 2012

ISSN: 2319-7064

Research Paper | Computer Science | Nigeria | Volume 9 Issue 2, February 2020

Feature Extraction Techniques for Efficient Analysis and Classification of Biomedical Images

Dr Ibrahim M. Adekunle

This paper develops and evaluates different techniques for detection, classification and analysis of pattern in medical images. The research work studies the structure of fractal and multi-fractal images; and extracts the statistical self-similarity features characterized by the Holder exponent for pattern classification. The effectiveness of local and global features has recently attracted growing attention in the field of texture image classification and retrieval. Global features from multi-fractal descriptors are extracted and combined with local features from fractal descriptors to generate new descriptors for efficient discrimination of images. The experimental approaches are validated for different scales of images during the classification process in order to determine the appropriate image size that could yield the maximum classification accuracy. The experimental results show that the descriptors extracted from the combined features considerably improve the performance of the classifiers. The results achieved in this paper have greatly demonstrated the effectiveness of local and global features in the analysis and classification of biomedical images.

Keywords: Global features, feature extraction, biomedical images, Local Features, Machine Learning and Multi-fractal Analysis

Edition: Volume 9 Issue 2, February 2020

Pages: 1197 - 1203


How to Cite this Article?

Dr Ibrahim M. Adekunle, "Feature Extraction Techniques for Efficient Analysis and Classification of Biomedical Images", International Journal of Science and Research (IJSR), https://www.ijsr.net/search_index_results_paperid.php?id=SR20212183753, Volume 9 Issue 2, February 2020, 1197 - 1203

21 PDF Views | 23 PDF Downloads

Download Article PDF



Similar Articles with Keyword 'Global features'

Research Paper, Computer Science, Nigeria, Volume 9 Issue 2, February 2020

Pages: 1191 - 1196

Local and Global Descriptors in CT Images for Efficient Pattern Classification

Dr Ibrahim M. Adekunle

Share this article

Research Paper, Computer Science, Nigeria, Volume 9 Issue 2, February 2020

Pages: 1197 - 1203

Feature Extraction Techniques for Efficient Analysis and Classification of Biomedical Images

Dr Ibrahim M. Adekunle

Share this article

Similar Articles with Keyword 'feature extraction'

Research Paper, Computer Science, Indonesia, Volume 9 Issue 5, May 2020

Pages: 666 - 672

Incremental Machine Learning to Detect Fake New Using Support Vector Machine

Edwin F Wicaksono, Ruddy J Suhatril, Matrissya Hermita

Share this article

Research Paper, Computer Science, India, Volume 2 Issue 5, May 2013

Pages: 309 - 310

Adaptive Histogram Equalization For Detecting Cancer In Digital Mammogram

Saranya Sathyamurthy, Dr. C. Lakshmi

Share this article

Research Paper, Computer Science, Nigeria, Volume 9 Issue 2, February 2020

Pages: 1191 - 1196

Local and Global Descriptors in CT Images for Efficient Pattern Classification

Dr Ibrahim M. Adekunle

Share this article

Research Paper, Computer Science, Nigeria, Volume 9 Issue 2, February 2020

Pages: 1197 - 1203

Feature Extraction Techniques for Efficient Analysis and Classification of Biomedical Images

Dr Ibrahim M. Adekunle

Share this article

Top