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RALF: A reinforced active learning formulation for object class recognition

机译:RALF:用于对象类别识别的强化主动学习公式

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Active learning aims to reduce the amount of labels required for classification. The main difficulty is to find a good trade-off between exploration and exploitation of the labeling process that depends — among other things — on the classification task, the distribution of the data and the employed classification scheme. In this paper, we analyze different sampling criteria including a novel density-based criteria and demonstrate the importance to combine exploration and exploitation sampling criteria. We also show that a time-varying combination of sampling criteria often improves performance. Finally, by formulating the criteria selection as a Markov decision process, we propose a novel feedback-driven framework based on reinforcement learning. Our method does not require prior information on the dataset or the sampling criteria but rather is able to adapt the sampling strategy during the learning process by experience. We evaluate our approach on three challenging object recognition datasets and show superior performance to previous active learning methods.
机译:主动学习旨在减少分类所需的标签数量。主要困难是要在标记过程的探索和利用之间找到良好的权衡,这尤其取决于分类任务,数据的分布和采用的分类方案。在本文中,我们分析了不同的采样标准,包括基于密度的新标准,并证明了将勘探和开发采样标准相结合的重要性。我们还表明,随时间变化的采样标准组合通常可以提高性能。最后,通过将标准选择公式化为马尔可夫决策过程,我们提出了一种基于强化学习的新型反馈驱动框架。我们的方法不需要关于数据集或采样标准的先验信息,而是能够根据经验在学习过程中调整采样策略。我们在三个具有挑战性的对象识别数据集上评估了我们的方法,并显示出优于以前的主动学习方法的性能。

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