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TOP-SIFT: A New Method for SIFT Descriptor Selection

机译:TOP-SIFT:一种新的SIFT描述符选择方法

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The large amount of SIFT descriptors in an image and the high dimensionality of SIFT descriptor has made problems for large-scale image dataset in terms of speed and scalability. In this paper, we propose a descriptor selection algorithm via dictionary learning and only a small set of features are reserved, which we refer to as TOP-SIFT. We discover the inner relativity between the problem of descriptor selection and dictionary learning for sparse representation, and then turn our problem into dictionary learning. Compared with the earlier methods, our method is neither relying on the dataset nor losing important information, and the experiments have shown that our algorithm can save memory space and increase the retrieval speed efficiently while maintain the recognition performance as well.
机译:图像中大量的SIFT描述符和SIFT描述符的高维性在速度和可伸缩性方面给大型图像数据集带来了问题。在本文中,我们通过字典学习提出了一种描述符选择算法,并且只保留了一小部分特征,我们将其称为TOP-SIFT。我们发现稀疏表示的描述符选择和字典学习之间的内在相对性,然后将我们的问题转化为字典学习。与以前的方法相比,该方法既不依赖数据集也不丢失重要信息,实验表明,该算法在保持识别性能的同时,可以节省存储空间,有效地提高检索速度。

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