A wealth of information regarding intelligent decision making is conveyed by human gaze and visual attention, hence, modeling and exploiting such information might be a promising way to strengthen algorithms like deep reinforcement learning. We collect high-quality human action and gaze data while playing Atari games. Using these data, we train a deep neural network that can predict human gaze positions and visual attention with high accuracy
Human visual attention is a complex phenomenon. A computational modeling of this phenomenon must tak...
As more computational resources become widely available, artificial intelligence and machine learnin...
Gaze following is defined as the redirection of one's visual attention to match the object of attent...
The emergence of deep learning has transformed the way researchers approach complex machine percepti...
We propose a framework that uses learned human visual attention model to guide the learning process ...
Workshop on Sixth International Conference on Learning Representations(ICLR 2018), May 3, 2018, Van...
Large-scale public datasets have been shown to benefit research in multiple areas of modern artifici...
Deep Convolutional Neural Networks (DCNNs) were originally inspired by principles of biological visi...
Attention is the mental awareness of human on a particular object or a piece of information. The lev...
We propose a novel attentional model for simultaneous object tracking and recognition that is driven...
We propose a novel attentional model for simultaneous object tracking and recognition that is driven...
We propose a biologically plausible neural model of selective covert visual attention. We show that ...
International audienceThis article reports on an investigation of the use of convolutional neural ne...
Visual attention region prediction has attracted the attention of intelligent systems researchers be...
Face recognition is an important area of research in cognitive science and machine learning. This is...
Human visual attention is a complex phenomenon. A computational modeling of this phenomenon must tak...
As more computational resources become widely available, artificial intelligence and machine learnin...
Gaze following is defined as the redirection of one's visual attention to match the object of attent...
The emergence of deep learning has transformed the way researchers approach complex machine percepti...
We propose a framework that uses learned human visual attention model to guide the learning process ...
Workshop on Sixth International Conference on Learning Representations(ICLR 2018), May 3, 2018, Van...
Large-scale public datasets have been shown to benefit research in multiple areas of modern artifici...
Deep Convolutional Neural Networks (DCNNs) were originally inspired by principles of biological visi...
Attention is the mental awareness of human on a particular object or a piece of information. The lev...
We propose a novel attentional model for simultaneous object tracking and recognition that is driven...
We propose a novel attentional model for simultaneous object tracking and recognition that is driven...
We propose a biologically plausible neural model of selective covert visual attention. We show that ...
International audienceThis article reports on an investigation of the use of convolutional neural ne...
Visual attention region prediction has attracted the attention of intelligent systems researchers be...
Face recognition is an important area of research in cognitive science and machine learning. This is...
Human visual attention is a complex phenomenon. A computational modeling of this phenomenon must tak...
As more computational resources become widely available, artificial intelligence and machine learnin...
Gaze following is defined as the redirection of one's visual attention to match the object of attent...