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Online Vicept learning for web-scale image understanding

机译:网上级图像理解的在线副作用

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Web-scale image understanding is a challenging but significant task to comprehend image contents on the internet. The de-facto standard methods based on machine learning or computer vision still suffer from a phenomenon of visual pol-ysemia and concept polymorphism (VPCP). To resolve the VPCP, Vicept has been proposed to characterize the membership distribution between visual appearances and semantic concepts. In this paper, we propose an online Vicept learning algorithm on the base of stochastic approximations, which can scale up to large scale datasets with millions of training samples. With the help of the Vicept, we develop an extension of the spatial pyramid matching (SPM) kernel method by generalizing the Vicept as a basic semantic description. The efficiency of our approach is validated in the experiments of web-scale semantic image search and image classification on the ImageNet dataset and Caltech-256 dataset.
机译:Web级图像理解是一个具有挑战性但重要的任务,可以在互联网上理解图像内容。基于机器学习或计算机视觉的De-Facto标准方法仍然遭受视觉波隆和概念多态性(VPCP)的现象。要解决VPCP,已提出副副本,以表征视觉外观和语义概念之间的成员分配。在本文中,我们提出了一种在随机近似基础上的在线副副资料学习算法,其可以使用数百万次训练样本扩展到大规模数据集。在副本的帮助下,我们通过概括副本作为基本语义描述来开发空间金字塔匹配(SPM)内核方法的扩展。我们的方法的效率在ImageNet DataSet和Caltech-256数据集的Web级语义图像搜索和图像分类的实验中验证。

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