资源论文Dataset Fingerprints: Exploring Image Collections Through Data Mining

Dataset Fingerprints: Exploring Image Collections Through Data Mining

2019-12-19 | |  62 |   48 |   0

Abstract

As the amount of visual data increases, so does the need for summarization tools that can be used to explore large image collections and to quickly get familiar with their content. In this paper, we propose dataset fifingerprints, a new and powerful method based on data mining that extracts meaningful patterns from a set of images. The discovered patterns are compositions of discriminative midlevel features that co-occur in several images. Compared to earlier work, ours stands out because i) its fully unsupervised, ii) discovered patterns cover large parts of the images,often corresponding to full objects or meaningful parts thereof, and iii) different patterns are connected based on co-occurrence, allowing a user to browsethe images from one pattern to the next and to group patterns in a semantically meaningful manner

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