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Feature Distribution Based Quick Image Retrieval

机译:基于特征分布的快速图像检索

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Query by image example is still a challenge in image retrieval. The goal of similarity retrieval in images is to get the similar images quickly and accurately in high-dimension space. The accuracy of similarity retrieval in high-dimension space is mainly decided by the features representing images and the method used for similar calculation. Our main goal in this paper is to improve the retrieval speed without great lost of accuracy. We propose a filtering method to greatly reduce the search range based on two assumptions: (1) the similar images will have similar amount of SIFT (scale invariant feature transform) features;(2) the similar images will all contain the important features. In contrast to prior work on similarity retrieval in high-dimension space, we use the distribution of features of images to filter the target images. Experimental results show that our approach can significantly reduce the time complexity.
机译:通过图像示例查询仍然是图像检索中的挑战。图像相似度检索的目的是在高维空间中快速准确地获得相似图像。高维空间中相似度检索的准确性主要取决于表示图像的特征和用于相似度计算的方法。我们本文的主要目标是提高检索速度,而不会造成很大的准确性损失。我们基于两个假设提出一种过滤方法,以大大减小搜索范围:(1)相似图像将具有相似数量的SIFT(尺度不变特征变换)特征;(2)相似图像都将包含重要特征。与先前在高维空间中进行相似度检索的工作相比,我们使用图像特征的分布来过滤目标图像。实验结果表明,我们的方法可以显着降低时间复杂度。

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