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Supervised and unsupervised relevance sampling in handcrafted and deep learning features obtained from image collections

机译:从图像集合获得的手工制作和深度学习功能中监督和无监督相关性采样

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摘要

Image collections are currently widely available and are being generated in a fast pace due to mobile and accessible equipment. In principle, that is a good scenario taking into account the design of successful visual pattern recognition systems. However, in particular for classification tasks, one may need to choose which examples are more relevant in order to build a training set that well represents the data, since they often require representative and sufficient observations to be accurate. In this paper we investigated three methods for selecting relevant examples from image collections based on learning models from small portions of the available data. We considered supervised methods that need labels to allow selection, and an unsupervised method that is agnostic to labels. The image datasets studied were described using both handcrafted and deep learning features. A general purpose algorithm is proposed which uses learning methods as subroutines. We show that our relevance selection algorithm outperforms random selection, in particular when using unlabelled data in an unsupervised approach, significantly reducing the size of the training set with little decrease in the test accuracy.
机译:图像集合目前可广泛可用,并由于移动和可访问设备而在快速上生成。原则上,这是一个很好的情景,考虑到了成功的视觉模式识别系统的设计。然而,特别是对于分类任务,可能需要选择哪个示例更相关,以便构建良好代表数据的训练集,因为它们通常需要代表性和足够的观察来准确。在本文中,我们研究了三种方法,用于根据来自可用数据的小部分的学习模型从图像集合中选择相关示例的三种方法。我们考虑了需要标签允许选择的监督方法以及对标签不可知的无监督方法。使用手工制作和深度学习功能描述了研究的图像数据集。提出了一种通用算法,它使用学习方法作为子例程。我们表明,我们的相关选择算法优于随机选择,特别是在不经过监督的方法中使用未标记的数据时,显着降低了测试精度几乎没有降低的训练集的大小。

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