Understanding where people look in images is an important problem in computer vision. Despite significant research, it remains unclear to what extent human fixations can be predicted by low-level (contrast) compared to highlevel (presence of objects) image features. Here we address this problem by introducing two novel models that use different feature spaces but the same readout architecture. The first model predicts human fixations based on deep neural network features trained on object recognition. This model sets a new state-of-the art in fixation prediction by achieving top performance in area under the curve metrics on the MIT300 hold-out benchmark (AUC = 88, sAUC = 77, NSS = 2.34). The second model uses purely low-level (isotropic co...
The ability to automatically detect visually interesting regions in images has many practical applic...
Predicting where humans will fixate in a scene has many practical applications. Biologically-inspire...
By predicting where humans look in natural scenes, we can understand how they perceive complex natur...
Understanding where people look in images is an important problem in computer vision. Despite signif...
Learning what properties of an image are associated with human gaze placement is important both for ...
Recent results suggest that state-of-the-art saliency models perform far from optimal in predicting ...
Where humans choose to look can tell us a lot about behaviour in a variety of tasks. Over the last d...
Recent results suggest that state-of-the-art saliency models perform far from op-timal in predicting...
The problem of predicting where people look at, or equivalently salient region detection, has been r...
Predicting where humans choose to fixate can help understanding a variety of human behaviour. The la...
Automatically predicting human eye fixations is a useful technique that can facilitate many multimed...
When free-viewing scenes, the first few fixations of human observers are driven in part by bottom-up...
Deep convolutional neural networks have demonstrated high performances for fixation prediction in r...
© 2015 IEEE. Automatically predicting human eye fixations is a useful technique that can facilitate ...
Under natural viewing conditions, human observers shift their gaze to allocate processing resources ...
The ability to automatically detect visually interesting regions in images has many practical applic...
Predicting where humans will fixate in a scene has many practical applications. Biologically-inspire...
By predicting where humans look in natural scenes, we can understand how they perceive complex natur...
Understanding where people look in images is an important problem in computer vision. Despite signif...
Learning what properties of an image are associated with human gaze placement is important both for ...
Recent results suggest that state-of-the-art saliency models perform far from optimal in predicting ...
Where humans choose to look can tell us a lot about behaviour in a variety of tasks. Over the last d...
Recent results suggest that state-of-the-art saliency models perform far from op-timal in predicting...
The problem of predicting where people look at, or equivalently salient region detection, has been r...
Predicting where humans choose to fixate can help understanding a variety of human behaviour. The la...
Automatically predicting human eye fixations is a useful technique that can facilitate many multimed...
When free-viewing scenes, the first few fixations of human observers are driven in part by bottom-up...
Deep convolutional neural networks have demonstrated high performances for fixation prediction in r...
© 2015 IEEE. Automatically predicting human eye fixations is a useful technique that can facilitate ...
Under natural viewing conditions, human observers shift their gaze to allocate processing resources ...
The ability to automatically detect visually interesting regions in images has many practical applic...
Predicting where humans will fixate in a scene has many practical applications. Biologically-inspire...
By predicting where humans look in natural scenes, we can understand how they perceive complex natur...