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Exploring Misclassification Information for Fine-Grained Image Classification

机译:探索细粒度图像分类的错误分类信息

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摘要

Fine-grained image classification is a hot topic that has been widely studied recently. Many fine-grained image classification methods ignore misclassification information, which is important to improve classification accuracy. To make use of misclassification information, in this paper, we propose a novel fine-grained image classification method by exploring the misclassification information (FGMI) of prelearned models. For each class, we harvest the confusion information from several prelearned fine-grained image classification models. For one particular class, we select a number of classes which are likely to be misclassified with this class. The images of selected classes are then used to train classifiers. In this way, we can reduce the influence of irrelevant images to some extent. We use the misclassification information for all the classes by training a number of confusion classifiers. The outputs of these trained classifiers are combined to represent images and produce classifications. To evaluate the effectiveness of the proposed FGMI method, we conduct fine-grained classification experiments on several public image datasets. Experimental results prove the usefulness of the proposed method.
机译:细粒度的图像分类是最近被广泛研究的热门话题。许多细粒度的图像分类方法忽略错误分类信息,这对于提高分类准确性很重要。为了利用错误分类信息,在本文中,我们通过探索前置模型的错误分类信息(FGMI)提出了一种新型细粒度的图像分类方法。对于每个课程,我们从几个前置的细粒度图像分类模型中收集了混淆信息。对于一个特定的类,我们选择许多可能会错误分类的类别。然后使用所选类的图像来培训分类器。通过这种方式,我们可以在一定程度上降低不相关的图像的影响。我们通过培训许多混淆分类器来使用所有类的错误分类信息。这些训练分类器的输出组合以表示图像并产生分类。为了评估所提出的FGMI方法的有效性,我们对几个公共图像数据集进行细粒度的分类实验。实验结果证明了该方法的有用性。

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