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Active Rare Class Discovery and Classification Using Dirichlet Processes

机译:使用Dirichlet流程进行主动稀有类发现和分类

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Classification is used to solve countless problems. Many real world computer vision problems, such as visual surveillance, contain uninteresting but common classes alongside interesting but rare classes. The rare classes are often unknown, and need to be discovered whilst training a classifier. Given a data set active learning selects the members within it to be labelled for the purpose of constructing a classifier, optimising the choice to get the best classifier for the least amount of effort. We propose an active learning method for scenarios with unknown, rare classes, where the problems of classification and rare class discovery need to be tackled jointly. By assuming a non-parametric prior on the data the goals of new class discovery and classification refinement are automatically balanced, without any tunable parameters. The ability to work with any specific classifier is maintained, so it may be used with the technique most appropriate for the problem at hand. Results are provided for a large variety of problems, demonstrating superior performance.
机译:分类用于解决无数问题。许多现实世界中的计算机视觉问题,例如视觉监视,都包含无趣但又普通的类以及有趣但稀有的类。稀有类别通常是未知的,需要在训练分类器时发现。给定一个数据集,主动学习会选择要标记的成员以构造一个分类器,从而优化选择,从而以最少的努力获得最佳分类器。我们提出了一种主动学习方法,用于未知类,稀有类的场景,其中分类和稀有类发现的问题需要共同解决。通过在数据上假设非参数先验,可以自动平衡新类发现和分类细化的目标,而无需任何可调参数。保留了使用任何特定分类器的能力,因此可以将其与最适合当前问题的技术一起使用。提供了针对各种问题的结果,证明了其卓越的性能。

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