Image representations are commonly learned from class labels, which are a simplistic approximation of human image understanding. In this paper we demonstrate that transferable representations of images can be learned without manual annotations by modeling human visual attention. The basis of our analyses is a unique gaze tracking dataset of sonographers performing routine clinical fetal anomaly screenings. Models of sonographer visual attention are learned by training a convolutional neural network (CNN) to predict gaze on ultrasound video frames through visual saliency prediction or gaze-point regression. We evaluate the transferability of the learned representations to the task of ultrasound standard plane detection in two contexts. First...
We present a novel automated approach for detection of standardized abdominal circumference (AC) pla...
While performing an ultrasound (US) scan, sonographers direct their gaze at regions of interest to v...
Recent advances in deep learning have achieved promising performance for medical image analysis, whi...
Image representations are commonly learned from class labels, which are a simplistic approximation o...
For visual tasks like ultrasound (US) scanning, experts direct their gaze towards regions of task-re...
We present a novel multi-task neural network called Temporal SonoEyeNet (TSEN) with a primary task t...
We present a novel multi-task convolutional neural network called Multi-task SonoEyeNet (M-SEN ) tha...
Obstetric ultrasound scanning is a safe and effective tool for the early detection of fetal abnormal...
Recent automated medical image analysis methods have attained state-of-the-art performance but have ...
Recent automated medical image analysis methods have attained state-of-the-art performance but have ...
Anatomical landmarks are a crucial prerequisite for many medical imaging tasks. Usually, the set of ...
Deep networks have been shown to achieve impressive accuracy for some medical image analysis tasks w...
Current automated fetal ultrasound (US) analysis methods employ local descriptors and machine learni...
While medical image analysis has seen extensive use of deep neural networks, learning over multiple ...
Artificial intelligence is having a very big boost in recent times, and after the success of deep le...
We present a novel automated approach for detection of standardized abdominal circumference (AC) pla...
While performing an ultrasound (US) scan, sonographers direct their gaze at regions of interest to v...
Recent advances in deep learning have achieved promising performance for medical image analysis, whi...
Image representations are commonly learned from class labels, which are a simplistic approximation o...
For visual tasks like ultrasound (US) scanning, experts direct their gaze towards regions of task-re...
We present a novel multi-task neural network called Temporal SonoEyeNet (TSEN) with a primary task t...
We present a novel multi-task convolutional neural network called Multi-task SonoEyeNet (M-SEN ) tha...
Obstetric ultrasound scanning is a safe and effective tool for the early detection of fetal abnormal...
Recent automated medical image analysis methods have attained state-of-the-art performance but have ...
Recent automated medical image analysis methods have attained state-of-the-art performance but have ...
Anatomical landmarks are a crucial prerequisite for many medical imaging tasks. Usually, the set of ...
Deep networks have been shown to achieve impressive accuracy for some medical image analysis tasks w...
Current automated fetal ultrasound (US) analysis methods employ local descriptors and machine learni...
While medical image analysis has seen extensive use of deep neural networks, learning over multiple ...
Artificial intelligence is having a very big boost in recent times, and after the success of deep le...
We present a novel automated approach for detection of standardized abdominal circumference (AC) pla...
While performing an ultrasound (US) scan, sonographers direct their gaze at regions of interest to v...
Recent advances in deep learning have achieved promising performance for medical image analysis, whi...