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Deep Unsupervised Saliency Detection: A Multiple Noisy Labeling Perspective

机译:深度无监督的显着性检测:多重噪声标记

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The success of current deep saliency detection methods heavily depends on the availability of large-scale supervision in the form of per-pixel labeling. Such supervision, while labor-intensive and not always possible, tends to hinder the generalization ability of the learned models. By contrast, traditional handcrafted features based unsupervised saliency detection methods, even though have been surpassed by the deep supervised methods, are generally dataset-independent and could be applied in the wild. This raises a natural question that 'Is it possible to learn saliency maps without using labeled data while improving the generalization ability?'. To this end, we present a novel perspective to unsupervised saliency detection through learning from multiple noisy labeling generated by 'weak' and 'noisy' unsupervised handcrafted saliency methods. Our end-to-end deep learning framework for unsupervised saliency detection consists of a latent saliency prediction module and a noise modeling module that work collaboratively and are optimized jointly. Explicit noise modeling enables us to deal with noisy saliency maps in a probabilistic way. Extensive experimental results on various benchmarking datasets show that our model not only outperforms all the unsupervised saliency methods with a large margin but also achieves comparable performance with the recent state-of-the-art supervised deep saliency methods.
机译:当前的深度显着性检测方法的成功很大程度上取决于以逐像素标记形式进行大规模监管的可用性。这种监督虽然劳动强度大且并不总是可能的,但往往会妨碍所学习模型的泛化能力。相比之下,尽管基于深度监督的方法已经超越了基于传统手工特征的无监督显着性检测方法,但它们通常与数据集无关,并且可以在野外应用。这就提出了一个自然的问题:“在提高泛化能力的同时,不使用标签数据就可以学习显着性图吗?”。为此,我们通过从“弱”和“嘈杂”的无监督手工显着性方法生成的多个嘈杂标签中学习,提出了无监督的显着性检测的新颖观点。我们用于无监督显着性检测的端到端深度学习框架由潜在的显着性预测模块和噪声建模模块组成,这些模块可协同工作并共同优化。显式噪声建模使我们能够以概率方式处理嘈杂的显着性图。在各种基准数据集上的大量实验结果表明,我们的模型不仅以较大的幅度胜过所有无监督的显着方法,而且还可以与最新的最新有监督的显着显着方法取得可比的性能。

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