A Hybrid Deep Neural Approach for Segmenting the COVID Affection Area from the Lungs X-Ray Images.
T VijayanandhA ShenbagavalliPublished in: New generation computing (2023)
Nowadays, COVID severity prediction has attracted widely in medical research because of the disease severity. Hence, the image processing application is also utilized to analyze COVID severity identification using lungs X-ray images. Thus, several intelligent schemes were employed to detect the COVID-affected part of the lungs X-ray images. However, the traditional neural approaches reported less severity classification accuracy due to the image complexity score. So, the present study has presented a novel chimp-based Adaboost Severity Analysis (CbASA) implemented in the MATLAB environment. Hence, the lung's X-ray images are utilized to test the working performance of the designed model. All public imaging data sources contain more noisy features, so the noise features are removed in the initial hidden layer of the novel CbASA then the noise-free data is imported into the classification phase. Feature extraction, segmentation, and severity specification have been performed in the classification layer. Finally, the performance of the classification score has been measured and compared with other models. Subsequently, the presented novel CbASA has earned the finest classification outcome.
Keyphrases
- deep learning
- coronavirus disease
- convolutional neural network
- sars cov
- high resolution
- artificial intelligence
- machine learning
- dual energy
- healthcare
- big data
- respiratory syndrome coronavirus
- emergency department
- magnetic resonance imaging
- computed tomography
- mental health
- mass spectrometry
- electron microscopy
- magnetic resonance
- optical coherence tomography
- contrast enhanced
- bioinformatics analysis