This paper investigates modifying an existing neural network architecture for static saliency prediction using two types of recurrences that integrate information from the temporal domain. The first modification is the addition of a ConvLSTM within the architecture, while the second is a conceptually simple exponential moving average of an internal convolutional state. We use weights pre-trained on the SALICON dataset and fine-tune our model on DHF1K. Our results show that both modifications achieve state-of-the-art results and produce similar saliency maps.Peer ReviewedPostprint (published version
Visual saliency prediction using transformers - Convolutional neural networks (CNNs) have significan...
pp 508-513International audienceWhen viewing video sequences, the human visual system (HVS) tends to...
The prediction of saliency areas in images has been tra-ditionally addressed with hand crafted featu...
This paper investigates modifying an existing neural network architecture for static saliency predic...
The performance of predicting human fixations in videos has been much enhanced with the help of deve...
This work adapts a deep neural model for image saliency prediction to the temporal domain o...
The prediction of salient areas in images has been traditionally addressed with hand-crafted feature...
Predicting visual attention is a very active field in the computer vision community. Visual attentio...
This paper presents a novel deep architecture for saliency prediction. Current state of the art mode...
In this paper, we propose a novel 3D CNN architecture that enables us to train an effective video sa...
Visual saliency models(VSM) mimic the human visual sys-tem to distinguish the salient regions from t...
In this work, we contribute to video saliency research in two ways. First, we introduce a new benchm...
State of the art approaches for saliency prediction are based on Fully Convolutional Networks, in wh...
State of the art approaches for saliency prediction are based on Full Convolutional Networks, in whi...
Convolutional neural networks (CNNs) have significantly advanced computational modelling for salienc...
Visual saliency prediction using transformers - Convolutional neural networks (CNNs) have significan...
pp 508-513International audienceWhen viewing video sequences, the human visual system (HVS) tends to...
The prediction of saliency areas in images has been tra-ditionally addressed with hand crafted featu...
This paper investigates modifying an existing neural network architecture for static saliency predic...
The performance of predicting human fixations in videos has been much enhanced with the help of deve...
This work adapts a deep neural model for image saliency prediction to the temporal domain o...
The prediction of salient areas in images has been traditionally addressed with hand-crafted feature...
Predicting visual attention is a very active field in the computer vision community. Visual attentio...
This paper presents a novel deep architecture for saliency prediction. Current state of the art mode...
In this paper, we propose a novel 3D CNN architecture that enables us to train an effective video sa...
Visual saliency models(VSM) mimic the human visual sys-tem to distinguish the salient regions from t...
In this work, we contribute to video saliency research in two ways. First, we introduce a new benchm...
State of the art approaches for saliency prediction are based on Fully Convolutional Networks, in wh...
State of the art approaches for saliency prediction are based on Full Convolutional Networks, in whi...
Convolutional neural networks (CNNs) have significantly advanced computational modelling for salienc...
Visual saliency prediction using transformers - Convolutional neural networks (CNNs) have significan...
pp 508-513International audienceWhen viewing video sequences, the human visual system (HVS) tends to...
The prediction of saliency areas in images has been tra-ditionally addressed with hand crafted featu...