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The Power of Ensembles for Active Learning in Image Classification

机译:在图像分类中激活学习的集合的力量

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Deep learning methods have become the de-facto standard for challenging image processing tasks such as image classification. One major hurdle of deep learning approaches is that large sets of labeled data are necessary, which can be prohibitively costly to obtain, particularly in medical image diagnosis applications. Active learning techniques can alleviate this labeling effort. In this paper we investigate some recently proposed methods for active learning with high-dimensional data and convolutional neural network classifiers. We compare ensemble-based methods against Monte-Carlo Dropout and geometric approaches. We find that ensembles perform better and lead to more calibrated predictive uncertainties, which are the basis for many active learning algorithms. To investigate why Monte-Carlo Dropout uncertainties perform worse, we explore potential differences in isolation in a series of experiments. We show results for MNIST and CIFAR-10, on which we achieve a test set accuracy of 90% with roughly 12,200 labeled images, and initial results on ImageNet. Additionally, we show results on a large, highly class-imbalanced diabetic retinopathy dataset. We observe that the ensemble-based active learning effectively counteracts this imbalance during acquisition.
机译:深学习方法已成为具有挑战性的图像处理任务,例如图像分类的事实标准。深学习的一个主要障碍是接近该大集标记的数据是必要的,这可能是令人望而却步昂贵获得,特别是在医用图像诊断应用程序。主动学习技术可以减轻这种标签的努力。在本文中,我们研究了高维数据和卷积神经网络分类主动学习一些最近提出的方法。我们比较反对蒙特卡洛差和几何方法基于集合的方法。我们发现,乐团有更好的表现,并导致更多的校准预测的不确定性,这是许多主动学习算法的基础。要调查为什么蒙特卡洛差的不确定性表现较差,我们探索了一系列的实验孤立的电位差。我们显示MNIST和CIFAR-10的结果,在我们达到90%,大约有12200标记图像测试集的精度,并在ImageNet初见成效。此外,我们表现出一个大的,高类不平衡糖尿病视网膜病变的数据集的结果。我们注意到,基于集合主动学习采集过程中可以有效地消除这种不平衡。

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