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Online Multiple Kernel Similarity Learning for Visual Search

机译:用于视觉搜索的在线多核相似性学习

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摘要

Recent years have witnessed a number of studies on distance metric learning to improve visual similarity search in content-based image retrieval (CBIR). Despite their successes, most existing methods on distance metric learning are limited in two aspects. First, they usually assume the target proximity function follows the family of Mahalanobis distances, which limits their capacity of measuring similarity of complex patterns in real applications. Second, they often cannot effectively handle the similarity measure of multimodal data that may originate from multiple resources. To overcome these limitations, this paper investigates an online kernel similarity learning framework for learning kernel-based proximity functions which goes beyond the conventional linear distance metric learning approaches. Based on the framework, we propose a novel online multiple kernel similarity (OMKS) learning method which learns a flexible nonlinear proximity function with multiple kernels to improve visual similarity search in CBIR. We evaluate the proposed technique for CBIR on a variety of image data sets in which encouraging results show that OMKS outperforms the state-of-the-art techniques significantly.
机译:近年来,目睹了许多有关距离度量学习的研究,以改善基于内容的图像检索(CBIR)中的视觉相似性搜索。尽管取得了成功,但大多数现有的距离度量学习方法都在两个方面受到限制。首先,他们通常假设目标邻近函数遵循马氏距离的族,这限制了它们在实际应用中测量复杂模式相似度的能力。其次,它们通常无法有效地处理可能源自多种资源的多模式数据的相似性度量。为了克服这些限制,本文研究了一种在线内核相似性学习框架,用于学习基于内核的邻近函数,该框架超越了传统的线性距离度量学习方法。在此框架的基础上,我们提出了一种新颖的在线多核相似度(OMKS)学习方法,该方法可以学习具有多个核的柔性非线性邻近函数,从而改善CBIR中的视觉相似度搜索。我们在各种图像数据集上评估了针对CBIR的拟议技术,其中令人鼓舞的结果表明OMKS明显优于最新技术。

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