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Webly-supervised visual concept learning with cardinality guided instance mining and clustered multitask refinement

机译:网络指导的视觉概念学习,具有基数指导的实例挖掘和集群多任务优化

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Conventional image classification and object detection methods depend on manual annotations, such as image-level labels and bounding boxes. However, the acquisition of such annotations for millions of images is trivial. This paper addresses the problem of webly-supervised visual concept learning, and develops an automatic algorithm using parallel text and visual corpora to discover informative visual patterns from the web images. Based on the mined patterns, a cardinality-guided multiple instance learning algorithm is designed to establish the link between the image patterns and the literal concepts. Furthermore, due to the diversity of visual concepts, we perform clustered multitask refinement on the learned concept classifiers to enhance their generalization capability via a clustered regularization. Experiments demonstrate the superiority of the proposed method over traditional approaches.
机译:常规的图像分类和对象检测方法取决于手动注释,例如图像级标签和边框。然而,对于数百万个图像而言,这样的注释的获取是微不足道的。本文解决了网络监督的视觉概念学习的问题,并开发了一种使用并行文本和视觉语料库从网络图像中发现信息丰富的视觉模式的自动算法。基于挖掘的模式,设计了一种以基数为指导的多实例学习算法,以建立图像模式与文字概念之间的链接。此外,由于视觉概念的多样性,我们对学习的概念分类器执行聚类多任务优化,以通过聚类正则化增强其泛化能力。实验证明了该方法相对于传统方法的优越性。

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