Depth-wise dense neural network for automatic COVID19 infection detection and diagnosis
Affiliation auteurs | Affiliation ok |
Titre | Depth-wise dense neural network for automatic COVID19 infection detection and diagnosis |
Type de publication | Journal Article |
Year of Publication | Submitted |
Auteurs | Qayyum A, Razzak I, Tanveer M., Kumar A |
Journal | ANNALS OF OPERATIONS RESEARCH |
Type of Article | Article; Early Access |
ISSN | 0254-5330 |
Mots-clés | COVID19, Deep learning, Diagnosis, Management |
Résumé | Coronavirus (COVID-19) and its new strain resulted in massive damage to society and brought panic worldwide. Automated medical image analysis such as X-rays, CT, and MRI offers excellent early diagnosis potential to augment the traditional healthcare strategy to fight against COVID-19. However, the identification of COVID infected lungs X-rays is challenging due to the high variation in infection characteristics and low-intensity contrast between normal tissues and infections. To identify the infected area, in this work, we present a novel depth-wise dense network that uniformly scales all dimensions and performs multilevel feature embedding, resulting in increased feature representations. The inclusion of depth wise component and squeeze-and-excitation results in better performance by capturing a more receptive field than the traditional convolutional layer; however, the parameters are almost the same. To improve the performance and training set, we have combined three large scale datasets. The extensive experiments on the benchmark X-rays datasets demonstrate the effectiveness of the proposed framework by achieving 96.17% in comparison to cutting-edge methods primarily based on transfer learning. |
DOI | 10.1007/s10479-021-04154-5 |