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Feature-Based Similarity Retrieval in Content-Based Image Retrieval

机译:基于内容的图像检索中基于特征的相似度检索

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Content-based image retrieval (CBIR), providing query by image examples other than key words, is a hot topic in recent years. Querying by words mainly depends on the performance of crawler, whereas query by example is more unpredictable, since feature extraction is still challenging due to the rich content of the image. This paper focuses on the issue of similarity retrieval in high-dimensional space, a problem of performing nearest neighbor queries efficiently and effectively over large high-dimensional databases. Although some arguments have advocated that nearest-neighbor queries do not even make sense for high-dimensional data, we review the existing techniques of working in vector space of high dimension, and provide our unique view towards the issue of time complexity and precision during similarity retrieval in CBIR.
机译:基于内容的图像检索(CBIR)提供了除关键字之外的图像示例查询,这是近年来的热门话题。通过单词查询主要取决于爬虫的性能,而通过示例查询则更加难以预测,因为由于图像内容丰富,特征提取仍然具有挑战性。本文着重研究高维空间中的相似性检索问题,即在大型高维数据库上高效地执行最近邻查询的问题。尽管有些论据主张最近邻居查询甚至对高维数据都没有意义,但我们回顾了在高维向量空间中工作的现有技术,并就相似期间的时间复杂性和精度问题提供了独特的见解。在CBIR中检索。

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