资源论文“Clustering by Composition” Unsupervised Discovery of Image Categories

“Clustering by Composition” Unsupervised Discovery of Image Categories

2020-04-02 | |  74 |   40 |   0

Abstract

We define a “good image cluster ” as one in which images can be eas- ily composed (like a puzzle) using pieces from each other, while are difficult to compose from images outside the cluster. The larger and more statistically sig- ni ficant the pieces are, the stronger the affinity between the images. This gives rise to unsupervised discovery of very challenging image categories. We further show how multiple images can be composed from each other simultaneously and efficiently using a collaborative randomized search algorithm. This collaborative process exploits the “wisdom of crowds of images”, to obtain a sparse yet mean- ingful set of image affinities, and in time which is almost linear in the size of the image collection. “Clustering-by-Composition” can be applied to very few images (where a ‘cluster model ’ cannot be ‘learned’), as well as on benchmark evaluation datasets, and yields state-of-the-art results.

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