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A Density clustering approach For CBIR System

机译:CBIR系统的密度聚类方法

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摘要

Searching an image in a huge set of images became an important task in several domains such as crime, medicine, geology and so on. The task of retrieving images by their visual contents is called content-based image retrieval (CBIR) systems. These systems have to be fast, efficient and semantically similar. For this aim, we used a new density clustering technique in our proposed CBIR system. The paper describes a new CBIR that uses a t-SNE (t-Distributed Stochastic Neighbor Embedding) data reduction and a proposed density-based clustering method. Several advantages are deduced from the proposition. First, reducing the dimensionality minimizes the required time and storage space. Next, reducing images to a very low dimension such as 2D or 3D permits an easier visualization. Also, no need to set image data parameters for clustering. Likewise, No need to introduce the number of clusters. Besides, it is effective for several image data especially shaped data. For validation tests, we use ZUBUD, Wang databases and shape datasets. Several comparison with two other CBIR systems such as FIRE and LIRE are included. The results obtained demonstrate the originality, reliability, and relevance of our proposition.
机译:在一系列巨大图像中搜索图像成为犯罪,医学,地质等若干领域的重要任务。通过其视觉内容检索图像的任务称为基于内容的图像检索(CBIR)系统。这些系统必须快速,高效且语义上类似。为此目的,我们在拟议的CBIR系统中使用了一种新的密度聚类技术。本文描述了一种新的CBIR,它使用T-SNE(T分布式随机邻居嵌入)数据减少和提出的基于密度的聚类方法。从命题推导出几个优点。首先,降低维度最小化所需的时间和存储空间。接下来,将图像缩小到诸如2D或3D的非常低的维度允许更容易可视化。此外,无需设置群集的图像数据参数。同样,无需引入群集的数量。此外,它对于尤其是形状的数据来说是有效的。对于验证测试,我们使用Zubud,Wang数据库和Shape Datasets。包括与另外两个CBIR系统(如火和雷岭)的比较。获得的结果展示了我们主张的原创性,可靠性和相关性。

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