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Saliency Detection via Combining Region-Level and Pixel-Level Predictions with CNNs

机译:通过与CNNS相结合的区域级和像素级预测的显着性检测

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This paper proposes a novel saliency detection method by combining region-level saliency estimation and pixel-level saliency prediction with CNNs (denoted as CRPSD). For pixel-level saliency prediction, a fully convolutional neural network (called pixel-level CNN) is constructed by modifying the VGGNet architecture to perform multi-scale feature learning, based on which an image-to-image prediction is conducted to accomplish the pixel-level saliency detection. For region-level saliency estimation, an adaptive superpixel based region generation technique is first designed to partition an image into regions, based on which the region-level saliency is estimated by using a CNN model (called region-level CNN). The pixel-level and region-level saliencies are fused to form the final salient map by using another CNN (called fusion CNN). And the pixel-level CNN and fusion CNN are jointly learned. Extensive quantitative and qualitative experiments on four public benchmark datasets demonstrate that the proposed method greatly outperforms the state-of-the-art saliency detection approaches.
机译:本文提出了通过组合区域级显着性估计和像素级的显着性预测与细胞神经网络(表示为CRPSD)一种新颖的显着性检测方法。对于像素级显着性预测,全卷积神经网络(称为像素级CNN)是通过修改VGGNet架构来执行多尺度特征的学习,在此基础上的图像 - 图像预测进行,以便完成所述像素构成-level显着性检测。对于区域级显着性的估计,自适应超像素基于区域生成技术首先设计成分割图像到其上的区域级显着性是通过使用CNN模型(称为区域级CNN)估计区域,是根据。所述像素级和区域级凸极稠合形成通过使用另一个CNN(称为融合CNN)的最终显着图。而像素级CNN和CNN融合的共同教训。四个公共基准数据集丰富的定量和定性实验证明,该方法大大优于国家的最先进的显着性检测方法。

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