Data-driven saliency has recently gained a lot of attention thanks to the use of Convolutional Neural Networks for predicting gaze fixations. In this paper we go beyond standard approaches to saliency prediction, in which gaze maps are computed with a feed-forward network, and present a novel model which can predict accurate saliency maps by incorporating neural attentive mechanisms. The core of our solution is a Convolutional LSTM that focuses on the most salient regions of the input image to iteratively refine the predicted saliency map. Additionally, to tackle the center bias typical of human eye fixations, our model can learn a set of prior maps generated with Gaussian functions. We show, through an extensive evaluation, that the propos...
Inspired by the primate visual system, computational saliency models decompose visual input into a s...
Saliency detection models aiming to quantitatively predict human eye-attended locations in the visua...
Predicting visual attention is a very active field in the computer vision community. Visual attentio...
Data-driven saliency has recently gained a lot of attention thanks to the use of Convolutional Neura...
Data-driven saliency has recently gained a lot of attention thanks to the use of convolutional neura...
The prediction of human eye fixations has been recently gaining a lot of attention thanks to the imp...
Estimating the focus of attention of a person looking at an image or a video is a crucial step which...
Deep convolutional neural networks have demonstrated high performances for fixation prediction in r...
Recent results suggest that state-of-the-art saliency models perform far from optimal in predicting ...
Recent results suggest that state-of-the-art saliency models perform far from op-timal in predicting...
In this paper, we proposed an integrated model of both semantic-aware and contrast-aware saliency (S...
This paper presents a novel deep architecture for saliency prediction. Current state of the art mode...
In this paper, we proposed an integrated model of both semantic-aware and contrast-aware saliency (S...
Understanding and predicting the human visual attention mechanism is an active area of research in t...
State of the art approaches for saliency prediction are based on Full Convolutional Networks, in whi...
Inspired by the primate visual system, computational saliency models decompose visual input into a s...
Saliency detection models aiming to quantitatively predict human eye-attended locations in the visua...
Predicting visual attention is a very active field in the computer vision community. Visual attentio...
Data-driven saliency has recently gained a lot of attention thanks to the use of Convolutional Neura...
Data-driven saliency has recently gained a lot of attention thanks to the use of convolutional neura...
The prediction of human eye fixations has been recently gaining a lot of attention thanks to the imp...
Estimating the focus of attention of a person looking at an image or a video is a crucial step which...
Deep convolutional neural networks have demonstrated high performances for fixation prediction in r...
Recent results suggest that state-of-the-art saliency models perform far from optimal in predicting ...
Recent results suggest that state-of-the-art saliency models perform far from op-timal in predicting...
In this paper, we proposed an integrated model of both semantic-aware and contrast-aware saliency (S...
This paper presents a novel deep architecture for saliency prediction. Current state of the art mode...
In this paper, we proposed an integrated model of both semantic-aware and contrast-aware saliency (S...
Understanding and predicting the human visual attention mechanism is an active area of research in t...
State of the art approaches for saliency prediction are based on Full Convolutional Networks, in whi...
Inspired by the primate visual system, computational saliency models decompose visual input into a s...
Saliency detection models aiming to quantitatively predict human eye-attended locations in the visua...
Predicting visual attention is a very active field in the computer vision community. Visual attentio...