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Novel Local Features with Hybrid Sampling Technique for Image Retrieval

机译:混合采样技术的图像局部特征检索

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In image retrieval, most existing approaches that incorporate local features produce high dimensional vectors, which lead to a high computational and data storage cost. Moreover, when it comes to the retrieval of generic real-life images, randomly generated patches are often more discriminant than the ones produced by corner/blob detectors. In order to tackle these problems, we propose a novel method incorporating local features with a hybrid sampling (a combination of detector-based and random sampling). We take three large data collections for the evaluation: MIRFlickr, ImageCLEF, and a collection from British National Geological Survey. The overall performance of the proposed approach is better than the performance of global features and comparable with the current state-of-the-art methods in content-based image retrieval. One of the advantages of our method when compared with others is its easy implementation and low computational cost. Another is that hybrid sampling can improve the performance of other methods based on the "bag of visual words" approach.
机译:在图像检索中,大多数结合局部特征的现有方法都会产生高维向量,从而导致较高的计算和数据存储成本。此外,在检索一般真实图像时,随机生成的色块通常比角/斑点检测器生成的色块更具判别力。为了解决这些问题,我们提出了一种将局部特征与混合采样(基于检测器的采样和随机采样相结合)相结合的新颖方法。我们评估了三个大型数据集合:MIRFlickr,ImageCLEF和来自英国国家地质调查局的集合。所提出的方法的整体性能要优于全局功能,并且可以与基于内容的图像检索中的最新技术相媲美。与其他方法相比,我们的方法的优点之一是易于实现且计算成本低。另一个是混合采样可以改善基于“视觉单词袋”方法的其他方法的性能。

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