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首页> 外文期刊>ISPRS International Journal of Geo-Information >Multiple Feature Hashing Learning for Large-Scale Remote Sensing Image Retrieval
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Multiple Feature Hashing Learning for Large-Scale Remote Sensing Image Retrieval

机译:大规模哈希图像检索的多特征哈希学习

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Driven by the urgent demand of remote sensing big data management and knowledge discovery, large-scale remote sensing image retrieval (LSRSIR) has attracted more and more attention. As is well known, hashing learning has played an important role in coping with big data mining problems. In the literature, several hashing learning methods have been proposed to address LSRSIR. Until now, existing LSRSIR methods take only one type of feature descriptor as the input of hashing learning methods and ignore the complementary effects of multiple features, which may represent remote sensing images from different aspects. Different from the existing LSRSIR methods, this paper proposes a flexible multiple-feature hashing learning framework for LSRSIR, which takes multiple complementary features as the input and learns the hybrid feature mapping function, which projects multiple features of the remote sensing image to the low-dimensional binary (i.e., compact) feature representation. Furthermore, the compact feature representations can be directly utilized in LSRSIR with the aid of the hamming distance metric. In order to show the superiority of the proposed multiple feature hashing learning method, we compare the proposed approach with the existing methods on two publicly available large-scale remote sensing image datasets. Extensive experiments demonstrate that the proposed approach can significantly outperform the state-of-the-art approaches.
机译:在遥感大数据管理和知识发现的迫切需求的推动下,大规模遥感图像检索(LSRSIR)已引起越来越多的关注。众所周知,哈希学习在应对大数据挖掘问题中发挥了重要作用。在文献中,已经提出了几种哈希学习方法来解决LSRSIR。到目前为止,现有的LSRSIR方法仅将一种类型的特征描述符作为哈希学习方法的输入,而忽略了多个特征的互补效应,这些特征可能代表来自不同方面的遥感图像。与现有的LSRSIR方法不同,本文针对LSRSIR提出了一种灵活的多特征哈希学习框架,该框架以多个互补特征为输入,并学习了混合特征映射功能,该功能将遥感图像的多个特征投影到低维二进制(即紧凑)特征表示。此外,借助汉明距离度量,可以在LSRSIR中直接使用紧凑的特征表示。为了展示所提出的多特征哈希学习方法的优越性,我们在两个可公开获得的大规模遥感图像数据集上将所提出的方法与现有方法进行了比较。大量的实验表明,所提出的方法可以大大优于现有方法。

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