Your browser doesn't support javascript.
MiniSeg: An Extremely Minimum Network for Efficient COVID-19 Segmentation
35th AAAI Conference on Artificial Intelligence / 33rd Conference on Innovative Applications of Artificial Intelligence / 11th Symposium on Educational Advances in Artificial Intelligence ; 35:4846-4854, 2021.
Article in English | Web of Science | ID: covidwho-1381752
ABSTRACT
The rapid spread of the new pandemic, i.e., COVID-19, has severely threatened global health. Deep-learning-based computer-aided screening, e.g., COVID-19 infected CT area segmentation, has attracted much attention. However, the publicly available COVID-19 training data are limited, easily causing overfitting for traditional deep learning methods that are usually data-hungry with millions of parameters. On the other hand, fast training/testing and low computational cost are also necessary for quick deployment and development of COVID-19 screening systems, but traditional deep learning methods are usually computationally intensive. To address the above problems, we propose MiniSeg, a lightweight deep learning model for efficient COVID-19 segmentation. Compared with traditional segmentation methods, MiniSeg has several significant strengths i) it only has 83K parameters and is thus not easy to overfit;ii) it has high computational efficiency and is thus convenient for practical deployment;iii) it can be fast retrained by other users using their private COVID-19 data for further improving performance. In addition, we build a comprehensive COVID-19 segmentation benchmark for comparing MiniSeg to traditional methods.
Search on Google
Collection: Databases of international organizations Database: Web of Science Language: English Journal: 33rd Conference on Innovative Applications of Artificial Intelligence Year: 2021 Document Type: Article

Similar

MEDLINE

...
LILACS

LIS

Search on Google
Collection: Databases of international organizations Database: Web of Science Language: English Journal: 33rd Conference on Innovative Applications of Artificial Intelligence Year: 2021 Document Type: Article