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Semi-supervised and active learning through Manifold Reciprocal kNN Graph for image retrieval

机译:通过流形倒数kNN图进行半监督和主动学习以进行图像检索

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摘要

A massive and ever growing amount of data collections, including visual and multimedia content are available today. Such content usually possesses additional information, as text or other metadata, to form a rather sparse and noisy, yet rich and diverse source of annotation. Although the text-based retrieval models are well established, they ignore the rich source of information encoded in the visual data. In contrast, the promising content-based retrieval technologies, capable of considering the multimedia content, still face obstacles for mapping the low level features into high level semantic concepts. Supervised approaches based on relevance feedback techniques have been employed for mitigating such gap on visual retrieval tasks. Although often quite effective, such methods rely only on labeled data, which can severely impact the retrieval effectiveness when the number of user interventions is insufficient. In this scenario, the retrieval approaches are ideally suitable for the emerging weakly supervised and active learning technology to semi-autonomously explore data collections by taking into account the relationships among multimedia objects and saving the user's efforts. In this paper, we discuss a novel semi-supervised learning algorithm for image retrieval tasks. While a manifold learning algorithm uses a reciprocal kNN graph to analyze the unlabeled data, the labeled information obtained through user interactions are represented using similarity sets. Both labeled and unlabeled information are modelled in terms of ranking information to allow a strict link between them. Experimental results obtained on various public datasets and several different visual features have demonstrated the effectiveness of the proposed approach. (C) 2019 Elsevier B.V. All rights reserved.
机译:如今,包括视觉和多媒体内容在内的大量且不断增长的数据收集已经可用。此类内容通常拥有其他信息,例如文本或其他元数据,以形成相当稀疏且嘈杂但又丰富多样的注释来源。尽管基于文本的检索模型已经很好地建立,但是它们忽略了可视数据中编码的丰富信息源。相反,有前途的基于内容的检索技术,能够考虑多媒体内容,仍然面临着将低级特征映射到高级语义概念的障碍。已经采用基于相关性反馈技术的监督方法来减轻视觉检索任务的这种差距。尽管这些方法通常非常有效,但它们仅依赖于标记的数据,当用户干预的数量不足时,这可能严重影响检索的有效性。在这种情况下,检索方法非常适合新兴的弱监督和主动学习技术,通过考虑多媒体对象之间的关系并节省用户的精力来半自主地探索数据收集。在本文中,我们讨论了一种新颖的半监督学习算法,用于图像检索任务。虽然流形学习算法使用倒数kNN图分析未标记的数据,但通过用户交互获得的标记信息使用相似性集表示。标记信息和未标记信息均根据排名信息进行建模,以实现它们之间的严格链接。在各种公共数据集和几种不同的视觉特征上获得的实验结果证明了该方法的有效性。 (C)2019 Elsevier B.V.保留所有权利。

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