We describe an automatic natural language processing (NLP)-based image captioning method to describe fetal ultrasound video content by modelling the vocabulary commonly used by sonographers and sonologists. The generated captions are similar to the words spoken by a sonographer when describing the scan experience in terms of visual content and performed scanning actions. Using full-length second-trimester fetal ultrasound videos and text derived from accompanying expert voice-over audio recordings, we train deep learning models consisting of convolutional neural networks and recurrent neural networks in merged configurations to generate captions for ultrasound video frames. We evaluate different model architectures using established general...
Synthesis of anatomically realistic ultrasound images could be potentially valuable in sonographer t...
Current automated fetal ultrasound (US) analysis methods employ local descriptors and machine learni...
Recent advances in deep learning have achieved promising performance for medical image analysis, whi...
Generating captions for ultrasound images and videos is an area that is yet to be fully studied and ...
We present a novel curriculum learning approach to train a natural language processing (NLP) based f...
In recent years, advances in ultrasound technology have made devices cheaper and portable thus makin...
Obstetric ultrasound assessment of fetal anatomy in the first trimester of pregnancy is one of the l...
In medical imaging, manual annotations can be expensive to acquire and sometimes infeasible to acces...
AbstractThe acquisition of fetal biometric measurements via 2-D B-Mode ultrasound (US) scans is cruc...
Ultrasound is a widely used imaging modality, yet it is well-known that scanning can be highly opera...
In fetal neurosonography, aligning two-dimensional (2D) ultrasound scans to their corresponding...
Confirmation of pregnancy viability (presence of fetal cardiac activity) and diagnosis of fetal pres...
For many emerging medical image analysis problems, there is limited data and associated annotations....
During routine ultrasound assessment of the fetal brain for biometry estimation and detection of fet...
With the development of technology and smart devices in the medical field, the computer system has b...
Synthesis of anatomically realistic ultrasound images could be potentially valuable in sonographer t...
Current automated fetal ultrasound (US) analysis methods employ local descriptors and machine learni...
Recent advances in deep learning have achieved promising performance for medical image analysis, whi...
Generating captions for ultrasound images and videos is an area that is yet to be fully studied and ...
We present a novel curriculum learning approach to train a natural language processing (NLP) based f...
In recent years, advances in ultrasound technology have made devices cheaper and portable thus makin...
Obstetric ultrasound assessment of fetal anatomy in the first trimester of pregnancy is one of the l...
In medical imaging, manual annotations can be expensive to acquire and sometimes infeasible to acces...
AbstractThe acquisition of fetal biometric measurements via 2-D B-Mode ultrasound (US) scans is cruc...
Ultrasound is a widely used imaging modality, yet it is well-known that scanning can be highly opera...
In fetal neurosonography, aligning two-dimensional (2D) ultrasound scans to their corresponding...
Confirmation of pregnancy viability (presence of fetal cardiac activity) and diagnosis of fetal pres...
For many emerging medical image analysis problems, there is limited data and associated annotations....
During routine ultrasound assessment of the fetal brain for biometry estimation and detection of fet...
With the development of technology and smart devices in the medical field, the computer system has b...
Synthesis of anatomically realistic ultrasound images could be potentially valuable in sonographer t...
Current automated fetal ultrasound (US) analysis methods employ local descriptors and machine learni...
Recent advances in deep learning have achieved promising performance for medical image analysis, whi...