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Multiple-instance learning based decision neural networks for image retrieval and classification

机译:基于多实例学习的决策神经网络进行图像检索和分类

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The revolutionary Internet and digital technologies have spawned a need for technology that can organize abundantly available digital images for easy categorization and retrieval. Hence, content-based image retrieval (CBIR) has become one of the most active research areas for the last few decades. However, it is still an open issue to narrow down the gap between the high level semantics in the human minds and the low level features computable by machines. This paper proposes a multiple-instance learning based decision neural network (MI-BDNN) that attempts to bridge the semantic ga in CBIR. Multiple-instance learning (MIL) is a variation of supervised learning, where the training set is composed of many bags, and each bag contains many instances. If a bag contains at least one positive instance, it is labelled as a positive bag; otherwise, it is labelled as a negative bag. A novel discriminant function and learning schemes are employed in the MI-BDNN to learn the concept from the training bags. The proposed approach considers the image retrieval problem as a MIL problem, where a user's preferred image concept is learned by training MI-BDNN with a set of exemplar images, each of which is labelled as conceptual related (positive) or conceptual unrelated (negative) image. The MI-BDNN based CBIR system is developed, and the results of the experiments showed that MI-BDNN can successfully be used for real image retrieval and classification problems. (C) 2015 Elsevier B.V. All rights reserved.
机译:革命性的互联网和数字技术催生了对可以组织大量可用的数字图像以便于分类和检索的技术的需求。因此,在过去的几十年中,基于内容的图像检索(CBIR)已成为最活跃的研究领域之一。但是,缩小人脑中高级语义与机器可计算的低级特征之间的差距仍然是一个悬而未决的问题。本文提出了一种基于多实例学习的决策神经网络(MI-BDNN),试图在CBIR中桥接语义ga。多实例学习(MIL)是监督学习的一种变体,其中训练集由许多袋子组成,每个袋子包含许多实例。如果一个袋子中至少包含一个阳性实例,则将其标记为阳性袋子;否则,它将被标记为阳性袋子。否则,它被标记为负袋。 MI-BDNN中采用了新颖的判别函数和学习方案,以从训练包中学习概念。所提出的方法将图像检索问题视为MIL问题,其中通过用一组示例图像训练MI-BDNN来学习用户的首选图像概念,每个示例图像都标记为概念相关(正)或概念无关(负)图片。开发了基于MI-BDNN的CBIR系统,实验结果表明MI-BDNN可以成功地用于实际图像检索和分类问题。 (C)2015 Elsevier B.V.保留所有权利。

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