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A NOVEL SIMILARITY ASSESSMENT FOR REMOTE SENSING IMAGES VIA FAST ASSOCIATION RULE MINING

机译:快速关联规则挖掘对遥感图像的新颖相似性评估

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Similarity assessment is the fundamentally important to various remote sensing applications such as image classification, image retrieval and so on. The objective of similarity assessment is to automatically distinguish differences between images and identify the contents of an image. Unlike the existing feature-based or object-based methods, we concern more about the deep level pattern of image content. The association rule mining is capable to find out the potential patterns of image, hence in this paper, a fast association rule mining algorithm is proposed and the similarity is represented by rules. More specifically, the proposed approach consist of the following steps: firstly, the gray level of image is compressed using linear segmentation to avoid interference of details and reduce the computation amount; then the compressed gray values between pixels are collected to generate the transaction sets which are transformed into the proposed multi-dimension data cube structure; the association rules are then fast mined based on multi-dimension data cube; finally the mined rules are represented as a vector and similarity assessment is achieved by vector comparison using first order approximation of Kullback-Leibler divergence. Experimental results indicate that the proposed fast association rule mining algorithm is more effective than the widely used Apriori method. The remote sensing image retrieval experiments using various images for example, QuickBird, WorldView-2, based on the existing and proposed similarity assessment show that the proposed method can provide higher retrieval precision.
机译:相似性评估是对各种遥感应用的根本重要意义,例如图像分类,图像检索等。相似性评估的目的是自动区分图像之间的差异并识别图像的内容。与现有的基于或基于对象的方法不同,我们更多地关注图像内容的深层模式。关联规则挖掘能够找出图像的潜在模式,因此在本文中,提出了一种快速关联规则挖掘算法,并且相似度由规则表示。更具体地,所提出的方法由以下步骤组成:首先,使用线性分割压缩图像的灰度级,以避免细节的干扰并减少计算量;然后收集像素之间的压缩灰度值以生成转换为所提出的多维数据立方体结构的事务集;然后基于多维数据立方体快速开采关联规则;最后,所开采的规则被表示为向量和相似性评估通过使用kullback-leibler发散的第一阶近似来实现通过矢量比较来实现。实验结果表明,所提出的快速关联规则挖掘算法比广泛使用的Apriori方法更有效。基于现有和建议的相似性评估,使用各种图像的遥感图像检索实验,Quickbird,WorldView-2,表明该方法可以提供更高的检索精度。

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