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Learning Visual Features from Large Weakly Supervised Data

机译:从大型弱监管数据学习视觉功能

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Convolutional networks trained on large supervised datasets produce visual features which form the basis for the state-of-the-art in many computer-vision problems. Further improvements of these visual features will likely require even larger manually labeled data sets, which severely limits the pace at which progress can be made. In this paper, we explore the potential of leveraging massive, weakly-labeled image collections for learning good visual features. We train convolutional networks on a dataset of 100 million Flickr photos and comments, and show that these networks produce features that perform well in a range of vision problems. We also show that the networks appropriately capture word similarity and learn correspondences between different languages.
机译:在大型监督数据集上培训的卷积网络产生了在许多计算机视觉问题中形成了最先进的基础的视觉功能。这些可视特征的进一步改进可能需要更大的手动标记的数据集,这严重限制了可以进行进展的步伐。在本文中,我们探讨了利用大规模,弱标记的图像集合来学习良好的视觉功能的可能性。我们在数据集上培训卷积网络,在1亿的Flickr照片和评论中,并显示这些网络在一系列视觉问题中产生良好的功能。我们还表明网络适当地捕获了不同语言之间的词相似性和学习的对应关系。

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