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Network-dependent kernels for image ranking

机译:依赖网络的内核,用于图像排名

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摘要

The exponential growth of social networks (SN) currently makes them the standard way to share and explore data where users put informations (images, text, audio,...) and refer to other contents. This creates connected networks whose links provide valuable informations in order to enhance the performance of many tasks in information retrieval including ranking and annotation. We introduce in this paper a novel image retrieval framework based on a new class of kernels referred to as “network-dependent”. The main contribution of our method includes (i) a variational framework which helps designing a kernel using both the intrinsic image features and the underlying contextual informations resulting from different (e.g. social) links and (ii) the proof of convergence of the kernel to a fixed-point, that is positive definite and thus associated with a reproducing kernel Hilbert space (RKHS). Experiments conducted on different ground truths, including the ImageClef/Flickr set, show the outperformance and the substantial gain of our ranking kernel with respect to the use of classic “network-free” kernels.
机译:社交网络(SN)的指数增长目前使它们成为共享和探索数据的标准方法,用户可以在其中放置信息(图像,文本,音频等)并参考其他内容。这将创建相互连接的网络,其链接可提供有价值的信息,以增强信息检索中许多任务(包括排名和注释)的性能。我们在本文中介绍一种基于称为“网络相关”的新型内核的新颖图像检索框架。我们方法的主要贡献包括(i)变体框架,该框架有助于使用固有图像特征和由不同(例如社交)链接产生的底层上下文信息来设计内核,以及(ii)内核收敛到内核的证明。固定点,它是正定的,因此与可再生内核希尔伯特空间(RKHS)相关。在包括ImageClef / Flickr集合在内的各种基本事实上进行的实验表明,相对于使用经典的“无网络”内核,我们的排名内核表现出众,并且获得了可观的收益。

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