2021
DOI: 10.48550/arxiv.2101.02035
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Scalable Feature Matching Across Large Data Collections

Abstract: This paper is concerned with matching feature vectors in a one-to-one fashion across large collections of datasets. Formulating this task as a multidimensional assignment problem with decomposable costs (MDADC), we develop extremely fast algorithms with time complexity linear in the number n of datasets and space complexity a small fraction of the data size. These remarkable properties hinge on using the squared Euclidean distance as dissimilarity function, which can reduce n 2 matching problems between pairs … Show more

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