The steadily increasing number of medical images places a tremendous burden on doctors, who toned to read and write reports. If an image captioning model could generate drafts of the reports from the corresponding images, the workload of doctors would be reduced, thereby saving time and expenses. The aim of this study was to develop a chest x-ray image captioning model that considers the differences between patient images and normal images, and uses hierarchical long short-term memory (LSTM) or a transformer as a decoder to generate reports. We investigated which feature representation method was the most appropriate for capturing the differences. The feature representations differed in terms of whether global average pooling was used for t...
The image captioning task is increasingly prevalent in artificial intelligence applications for medi...
INST: L_042There are several image captioning techniques which use CNN and LSTM to caption the image...
Abstract Medical image captioning is the process of generating clinically significant descriptions t...
Medical image captioning can reduce the workload of physicians and save time and expense by automati...
Transformer-based approaches have shown good results in image captioning tasks. However, current app...
The image captioning task is increasingly prevalent in artificial intelligence applications for medi...
Medical image captioning is a very challenging task that has been rarely addressed in the literature...
Abstract- In many industrial, medical and scientific image processing applications, various feature ...
Abstract Medical image captioning is a very challenging task that has been rarely addressed in the ...
The domain of Deep Learning that is related to generation of textual description of images is called...
The domain of Deep Learning that is related to generation of textual description of images is cal...
The automatic caption generation of chest X-ray report is a hot research topic at present. Image cap...
Automatically generating a novel description of an image is a challenging and important problem that...
Natural language problems have already been investigated for around five years. Recent progress in a...
A methodology is described for the generation of relevant captions for images of an extensiv...
The image captioning task is increasingly prevalent in artificial intelligence applications for medi...
INST: L_042There are several image captioning techniques which use CNN and LSTM to caption the image...
Abstract Medical image captioning is the process of generating clinically significant descriptions t...
Medical image captioning can reduce the workload of physicians and save time and expense by automati...
Transformer-based approaches have shown good results in image captioning tasks. However, current app...
The image captioning task is increasingly prevalent in artificial intelligence applications for medi...
Medical image captioning is a very challenging task that has been rarely addressed in the literature...
Abstract- In many industrial, medical and scientific image processing applications, various feature ...
Abstract Medical image captioning is a very challenging task that has been rarely addressed in the ...
The domain of Deep Learning that is related to generation of textual description of images is called...
The domain of Deep Learning that is related to generation of textual description of images is cal...
The automatic caption generation of chest X-ray report is a hot research topic at present. Image cap...
Automatically generating a novel description of an image is a challenging and important problem that...
Natural language problems have already been investigated for around five years. Recent progress in a...
A methodology is described for the generation of relevant captions for images of an extensiv...
The image captioning task is increasingly prevalent in artificial intelligence applications for medi...
INST: L_042There are several image captioning techniques which use CNN and LSTM to caption the image...
Abstract Medical image captioning is the process of generating clinically significant descriptions t...