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Adversarial Learning Based Saliency Detection

机译:基于对抗学习的显着性检测

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Image saliency detection has recently witnessed rapid progress due to deep convolutional neural networks. However, the typical binary cross entropy loss used in the networks by saliency detection is a pixel-wise loss, resulting in the independent prediction of the salient probability of each pixel. It raises the problem of spatial discontinuity of the predicted saliency maps. Many researchers try to solve this problem by using super-pixel segmentation, but it is complicated and time-consuming. In this paper, we propose an Adversarial Saliency Detection Network (ASDN) to enhance the spatial continuity of the saliency maps with two sub-networks which are saliency detection network and discriminator network, respectively. The aim of the discriminator is to distinguish the saliency maps predicted by the saliency detection network from the ground truth. In this way, the discriminator helps the saliency detection network to enhance long-range spatial continuity of the predicted saliency map. Our ASDN achieves the state-of-the-art performance on standard salient object detection benchmarks.
机译:由于深度卷积神经网络,图像显着性检测最近见证了快速的进步。但是,通过显着性检测在网络中使用的典型二进制交叉熵损失是逐像素损失,从而可以独立预测每个像素的显着概率。这就提出了预测显着性图的空间不连续性的问题。许多研究人员试图通过使用超像素分割来解决此问题,但它既复杂又耗时。在本文中,我们提出了一个对抗显着性检测网络(ASDN),以通过两个分别为显着性检测网络和鉴别器网络的子网来增强显着性图的空间连续性。判别器的目的是将显着性检测网络预测的显着性图与地面真实情况区分开。以此方式,鉴别器帮助显着性检测网络增强预测的显着性图的远程空间连续性。我们的ASDN在标准显着目标检测基准上达到了最先进的性能。

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