An Adaptive Feature Extraction Method for Classification of Covid-19 X-Ray Images
Künye
GÜNDOĞAR, Zeynep & Furkan EREN. "An Adaptive Feature Extraction Method for Classification of Covid-19 X-Ray İmages", Signal, Image and Video Processing, (2022).Özet
This study aims to detect Covid-19 disease in the fastest and most accurate way from X-ray images by developing a new
feature extraction method and deep learning model . Partitioned Tridiagonal Enhanced Multivariance Products Representation
(PTMEMPR) method is proposed as a new feature extraction method by using matrix partition in TMEMPR method which is
known as matrix decomposition method in the literature. The proposed method which provides 99.9% data reduction is used
as a preprocessing method in the scheme of the Covid-19 diagnosis. To evaluate the performance of the proposed method,
it is compared with the state-of-the-art feature extraction methods which are Singular Value Decomposition(SVD), Discrete
Wavelet Transform(DWT) and Discrete Cosine Transform(DCT). Also new deep learning models which are called FSMCov,
FSMCov-N and FSMCov-L are developed in this study. The experimental results indicate that the combination of newly
proposed feature extraction method and deep learning models yield an overall accuracy 99.8%.