4 research outputs found
Comparative study of COVID and pulmonary fibrotic CT lung images using siamese networks with VGG16
In this research an algorithm is proposed to produce comparative results between Pulmonary Fibrosis of the lungs and COVID computer tomography lung images for the purpose of research to aid in the field of medical science. The Siamese Network which is based on parallel tandem operation to produce comparative results, is altered by changing or altering the implementation function using the VGG16 neural network. The input data set in the method uses a variation of healthy lung CT images along with CT images of cases with pulmonary fibrosis and COVID. The main aim is to produce a comparative study on the textural variation of the CT images under study to further enhance research outputs in the future with accuracy and less time consumption
Comparative study of COVID and pulmonary fibrotic CT lung images using siamese networks with VGG16
In this research an algorithm is proposed to produce comparative results between Pulmonary Fibrosis of the lungs and COVID computer tomography lung images for the purpose of research to aid in the field of medical science. The Siamese Network which is based on parallel tandem operation to produce comparative results, is altered by changing or altering the implementation function using the VGG16 neural network. The input data set in the method uses a variation of healthy lung CT images along with CT images of cases with pulmonary fibrosis and COVID. The main aim is to produce a comparative study on the textural variation of the CT images under study to further enhance research outputs in the future with accuracy and less time consumption
Identification of bronchopulmonary segment containing COVID abrasions using EG-CNN and Segnet
As the current COVID pandemic is a huge concern, more effective methods are required for treatment and analysis of this disease. If COVID analysis is aided by automated detection of the disease, this will reduce time and also speed up treatment. In this research, the particular bronchopulmonary segment containing COVID is detected to narrow and segregate the treatment area. Computer Tomographic Images are passed through EG-CNN which is modelled with Segnet to detect COVID-19 abrasions. The output of the two CNNs are gated to develop the final result with high accuracy
Diagnostic of Cystic Fibrosis in Lung Computer Tomographic Images using Image Annotation and Improved PSPNet Modelling
The research deals with the development of an algorithm for detecting pathological formation in cystic fibrosis using the PSPNet model with focal loss. The model allows data sets to be entered in accordance to their similarities based on their pathological diagnostic signs. The simple and effective algorithm structure groups annotated images, processes them in a multiscale CNN, and localizes areas of cystic fibrosis in the lungs with high accuracy