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Multi-level Net: A Visual Saliency Prediction Model

机译:多级网络:视力效力预测模型

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State of the art approaches for saliency prediction are based on Fully Convolutional Networks, in which saliency maps are built using the last layer. In contrast, we here present a novel model that predicts saliency maps exploiting a non-linear combination of features coming from different layers of the network. We also present a new loss function to deal with the imbalance issue on saliency masks. Extensive results on three public datasets demonstrate the robustness of our solution. Our model outperforms the state of the art on SALICON, which is the largest and unconstrained dataset available, and obtains competitive results on MIT300 and CAT2000 benchmarks.
机译:所需预测的最先修方法基于完全卷积网络,其中使用最后一层构建显着性图。相比之下,我们在这里提出了一种新颖的模型,其预测显着图利用来自网络的不同层的特征的非线性组合。我们还提出了一种新的损失函数来处理持续掩模的不平衡问题。三个公共数据集的广泛结果展示了我们解决方案的稳健性。我们的模型优于Salicon的最新状态,这是最大和无约束的数据集可用,并在MIT300和Cat2000基准上获得竞争结果。

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