From categories to subcategories: Large-scale image classification with partial class label refinement

M. Ristin, Juergen Gall, M. Guillaumin, L. Gool
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引用次数: 52

Abstract

The number of digital images is growing extremely rapidly, and so is the need for their classification. But, as more images of pre-defined categories become available, they also become more diverse and cover finer semantic differences. Ultimately, the categories themselves need to be divided into subcategories to account for that semantic refinement. Image classification in general has improved significantly over the last few years, but it still requires a massive amount of manually annotated data. Subdividing categories into subcategories multiples the number of labels, aggravating the annotation problem. Hence, we can expect the annotations to be refined only for a subset of the already labeled data, and exploit coarser labeled data to improve classification. In this work, we investigate how coarse category labels can be used to improve the classification of subcategories. To this end, we adopt the framework of Random Forests and propose a regularized objective function that takes into account relations between categories and subcategories. Compared to approaches that disregard the extra coarse labeled data, we achieve a relative improvement in subcategory classification accuracy of up to 22% in our large-scale image classification experiments.
从类别到子类别:部分类别标签细化的大规模图像分类
数字图像的数量增长非常迅速,因此需要它们的分类。但是,随着更多预定义类别的图像可用,它们也变得更加多样化,并涵盖更细微的语义差异。最终,需要将类别本身划分为子类别,以解释语义细化。在过去的几年里,图像分类总体上有了很大的改进,但它仍然需要大量的人工注释数据。将类别细分为子类别会增加标签的数量,从而加剧标注问题。因此,我们可以期望仅为已标记数据的子集改进注释,并利用更粗糙的标记数据来改进分类。在这项工作中,我们研究了如何使用粗类别标签来改进子类别的分类。为此,我们采用随机森林的框架,提出了一个考虑类别和子类别之间关系的正则化目标函数。与不考虑额外粗糙标记数据的方法相比,我们在大规模图像分类实验中实现了子类别分类精度的相对提高,最高可达22%。
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