For visual tasks like ultrasound (US) scanning, experts direct their gaze towards regions of task-relevant information. Therefore, learning to predict the gaze of sonographers on US videos captures the spatio-temporal patterns that are important for US scanning. The spatial distribution of gaze points on video frames can be represented through heat maps termed saliency maps. Here, we propose a temporally bidirectional model for video saliency prediction (BDS-Net), drawing inspiration from modern theories of human cognition. The model consists of a convolutional neural network (CNN) encoder followed by a bidirectional gated-recurrent-unit recurrent convolutional network (GRU-RCN) decoder. The temporal bidirectionality mimics human cognition,...
Abstract — Since visual attention-based computer vision appli-cations have gained popularity, ever m...
Human vision system actively seeks salient regions and movements in video sequences to reduce the se...
International audiencePrediction of visual saliency in images and video is a highly researched topic...
Image representations are commonly learned from class labels, which are a simplistic approximation o...
We present a novel multi-task neural network called Temporal SonoEyeNet (TSEN) with a primary task t...
In this paper we develop a multi-modal video analysis algorithm to predict where a sonographer shoul...
Obstetric ultrasound scanning is a safe and effective tool for the early detection of fetal abnormal...
We present a novel multi-task convolutional neural network called Multi-task SonoEyeNet (M-SEN ) tha...
Anatomical landmarks are a crucial prerequisite for many medical imaging tasks. Usually, the set of ...
While performing an ultrasound (US) scan, sonographers direct their gaze at regions of interest to v...
International audienceThis paper presents a spatio-temporal saliency model that predicts eye movemen...
We present a novel automated approach for detection of standardized abdominal circumference (AC) pla...
This paper presents a novel multi-modal learning approach for automated skill characterization of ob...
While medical image analysis has seen extensive use of deep neural networks, learning over multiple ...
Current automated fetal ultrasound (US) analysis methods employ local descriptors and machine learn...
Abstract — Since visual attention-based computer vision appli-cations have gained popularity, ever m...
Human vision system actively seeks salient regions and movements in video sequences to reduce the se...
International audiencePrediction of visual saliency in images and video is a highly researched topic...
Image representations are commonly learned from class labels, which are a simplistic approximation o...
We present a novel multi-task neural network called Temporal SonoEyeNet (TSEN) with a primary task t...
In this paper we develop a multi-modal video analysis algorithm to predict where a sonographer shoul...
Obstetric ultrasound scanning is a safe and effective tool for the early detection of fetal abnormal...
We present a novel multi-task convolutional neural network called Multi-task SonoEyeNet (M-SEN ) tha...
Anatomical landmarks are a crucial prerequisite for many medical imaging tasks. Usually, the set of ...
While performing an ultrasound (US) scan, sonographers direct their gaze at regions of interest to v...
International audienceThis paper presents a spatio-temporal saliency model that predicts eye movemen...
We present a novel automated approach for detection of standardized abdominal circumference (AC) pla...
This paper presents a novel multi-modal learning approach for automated skill characterization of ob...
While medical image analysis has seen extensive use of deep neural networks, learning over multiple ...
Current automated fetal ultrasound (US) analysis methods employ local descriptors and machine learn...
Abstract — Since visual attention-based computer vision appli-cations have gained popularity, ever m...
Human vision system actively seeks salient regions and movements in video sequences to reduce the se...
International audiencePrediction of visual saliency in images and video is a highly researched topic...