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SAM: Pushing the Limits of Saliency Prediction Models

机译:山姆:推动显着性预测模型的限制

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The prediction of human eye fixations has been recently gaining a lot of attention thanks to the improvements shown by deep architectures. In our work, we go beyond classical feed-forward networks to predict saliency maps and propose a Saliency Attentive Model which incorporates neural attention mechanisms to iteratively refine predictions. Experiments demonstrate that the proposed strategy overcomes by a considerable margin the state of the art on the largest dataset available for saliency prediction. Here, we provide experimental results on other popular saliency datasets to confirm the effectiveness and the generalization capabilities of our model, which enable us to reach the state of the art on all considered datasets.
机译:由于深层架构所示的改进,最近对人眼固定的预测已经获得了很大的关注。在我们的工作中,我们超越经典前锋网络,以预测显着性图,并提出了一种粘附的细节模型,该模型包括神经关注机制来迭代地精确预测。实验表明,拟议的战略克服了最大的利润率在最大的数据集上可用于显着性预测的最大数据集。在这里,我们在其他流行的显着数据集中提供实验结果,以确认我们模型的有效性和泛化能力,使我们能够在所有考虑的数据集中到达最先进的国家。

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