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Unsupervised Classification of Images: A Review

机译:图像无监督分类:综述

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Unsupervised image classification is the process by which each image in a dataset is identified to be a member of one of the inherent categories present in the image collection without the use of labelled training samples. Unsupervised categorisation of images relies on unsupervised machine learning algorithms for its implementation. This paper identifies clustering algorithms and dimension reduction algorithms as the two main classes of unsupervised machine learning algorithms needed in unsupervised image categorisation, and then reviews how these algorithms are used in some notable implementation of unsupervised image classification algorithms.
机译:无监督图像分类是这样的过程,通过该过程,无需使用标记的训练样本即可将数据集中的每个图像识别为图像集合中存在的固有类别之一。图像的无监督分类依赖于无监督机器学习算法来实现。本文将聚类算法和降维算法确定为无监督图像分类所需的两大类无监督机器学习算法,然后回顾了这些算法如何在无监督图像分类算法的一些显着实现中使用。

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