Salient object detection is subjective in nature, which implies that multiple estimations should be related to the same input image. Most existing salient object detection models are deterministic following a point to point estimation learning pipeline, making them incapable of estimating the predictive distribution. Although latent variable model based stochastic prediction networks exist to model the prediction variants, the latent space based on the single clean saliency annotation is less reliable in exploring the subjective nature of saliency, leading to less effective saliency divergence modeling. Given multiple saliency annotations, we introduce a general divergence modeling strategy via random sampling, and apply our strategy to an ...
We present a new method for image salience prediction, Clustered Saliency Prediction. This method di...
The technique of visual saliency detection supports video surveillance systems by reducing redundant...
In this paper, we propose using augmented hypotheses which consider objectness, foreground, and comp...
Saliency detection models are trained to discover the region(s) of an image that attract human atten...
Conventional saliency prediction models typically learn a deterministic mapping from an image to its...
Computational modeling of visual attention has been a very active area over the past few decades. Nu...
Saliency methods are a popular class of feature attribution explanation methods that aim to capture ...
Video salient object detection models trained on pixel-wise dense annotation have achieved excellent...
Deep learning based salient object detection has recently achieved great success with its performanc...
Current state-of-the-art saliency detection models rely heavily on large datasets of accurate pixel-...
Albeit intensively studied, false prediction and unclear boundaries are still major issues of salien...
In this paper, we show that large annotated data sets have great potential to provide strong priors ...
Visual attention is an important mechanism in our human vision system, which filters out redundant a...
Saliency prediction is a well studied problem in computer vision. Early saliency models were based ...
The success of current deep saliency detection methods heavily depends on the availability of large-...
We present a new method for image salience prediction, Clustered Saliency Prediction. This method di...
The technique of visual saliency detection supports video surveillance systems by reducing redundant...
In this paper, we propose using augmented hypotheses which consider objectness, foreground, and comp...
Saliency detection models are trained to discover the region(s) of an image that attract human atten...
Conventional saliency prediction models typically learn a deterministic mapping from an image to its...
Computational modeling of visual attention has been a very active area over the past few decades. Nu...
Saliency methods are a popular class of feature attribution explanation methods that aim to capture ...
Video salient object detection models trained on pixel-wise dense annotation have achieved excellent...
Deep learning based salient object detection has recently achieved great success with its performanc...
Current state-of-the-art saliency detection models rely heavily on large datasets of accurate pixel-...
Albeit intensively studied, false prediction and unclear boundaries are still major issues of salien...
In this paper, we show that large annotated data sets have great potential to provide strong priors ...
Visual attention is an important mechanism in our human vision system, which filters out redundant a...
Saliency prediction is a well studied problem in computer vision. Early saliency models were based ...
The success of current deep saliency detection methods heavily depends on the availability of large-...
We present a new method for image salience prediction, Clustered Saliency Prediction. This method di...
The technique of visual saliency detection supports video surveillance systems by reducing redundant...
In this paper, we propose using augmented hypotheses which consider objectness, foreground, and comp...