With the development of society and the advancement of science and technology, artificial intelligence has also emerged as the times require. In computer vision, deep learning based on convolutional neural networks(CNN) achieves state-of-the-art performance. However, the massive data requirements of deep learning have long been a pain point in the field, especially in the medical field, where it is often difficult (and sometimes impossible) to obtain enough training data for some specific tasks. To overcome insufficient and unbalanced data, in this paper, we focus on the generation and balance of data on radiation-induced pneumonia, an extremely rare disease with a low incidence. As a result, datasets on this disease are extremely sparse an...
Deep learning provides smart alternatives and efficient algorithms on data-driven models for data pr...
Data augmentation is widely used in image processing and pattern recognition problems in order to in...
Machine learning models are renowned for their high dependency on a large corpus of data in solving ...
With the development of society and the advancement of science and technology, artificial intelligen...
The SARS-CoV-2 virus has spread worldwide, and the World Health Organization has declared COVID-19 p...
As a communicable disease, most pneumonia cases are brought on by bacteria or viruses, which cause ...
Coronavirus (which is also known as COVID-19) is severely impacting the wellness and lives of many a...
Coronavirus (which is also known as COVID-19) is severely impacting the wellness and lives of many a...
The resurgence of deep learning has improved computer vision by increasing its applicability and sca...
For deep learning, the size of the dataset greatly affects the final training effect. However, in th...
Currently, many deep learning models are being used to classify COVID‐19 and normal cases from chest...
In recent years, chest X-ray (CXR) imaging has become one of the significant tools to assist in the ...
Coronavirus disease has rapidly spread globally since early January of 2020. With millions of deaths...
Early diagnosis of the harmful severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), along w...
Chest X-ray imaging technology used for the early detection and screening of COVID-19 pneumonia is b...
Deep learning provides smart alternatives and efficient algorithms on data-driven models for data pr...
Data augmentation is widely used in image processing and pattern recognition problems in order to in...
Machine learning models are renowned for their high dependency on a large corpus of data in solving ...
With the development of society and the advancement of science and technology, artificial intelligen...
The SARS-CoV-2 virus has spread worldwide, and the World Health Organization has declared COVID-19 p...
As a communicable disease, most pneumonia cases are brought on by bacteria or viruses, which cause ...
Coronavirus (which is also known as COVID-19) is severely impacting the wellness and lives of many a...
Coronavirus (which is also known as COVID-19) is severely impacting the wellness and lives of many a...
The resurgence of deep learning has improved computer vision by increasing its applicability and sca...
For deep learning, the size of the dataset greatly affects the final training effect. However, in th...
Currently, many deep learning models are being used to classify COVID‐19 and normal cases from chest...
In recent years, chest X-ray (CXR) imaging has become one of the significant tools to assist in the ...
Coronavirus disease has rapidly spread globally since early January of 2020. With millions of deaths...
Early diagnosis of the harmful severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), along w...
Chest X-ray imaging technology used for the early detection and screening of COVID-19 pneumonia is b...
Deep learning provides smart alternatives and efficient algorithms on data-driven models for data pr...
Data augmentation is widely used in image processing and pattern recognition problems in order to in...
Machine learning models are renowned for their high dependency on a large corpus of data in solving ...