多标签图像分类中的未知标签发现

Jun Huang, Yu Yan, Xiao Zheng, Xiwen Qu, Xudong Hong
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引用次数: 0

摘要

多标签学习(multi-label learning, MLL)方法可以同时处理具有多个标签的实例,已经提出了许多著名的方法来解决各种与多标签学习相关的问题。现有的MLL方法主要是在固定标签集的假设下应用的,即对训练数据都观察到类标签。然而,在许多现实世界的应用程序中,可能会有一些未知的标签在这个集合之外,特别是对于大规模和复杂的数据集。本文提出了一种基于深度学习的多标签分类模型,用于多标签图像分类中未知标签的发现。它可以同时预测未知图像的已知和未知标签。此外,在模型中引入了注意机制,利用未知标签的注意图来观察图像中对应的对象,并获得这些未知标签的语义信息。
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Discovering Unknown Labels for Multi-Label Image Classification
A multi-label learning (MLL) method can simul-taneously process the instances with multiple labels, and many well-known methods have been proposed to solve various MLL-related problems. The existing MLL methods are mainly applied under the assumption of a fixed label set, i.e., the class labels are all observed for the training data. However, in many real-world applications, there may be some unknown labels outside of this set, especially for large-scale and complex datasets. In this paper, a multi-label classification model based on deep learning is proposed to discover the unknown labels for multi-label image classification. It can simultaneously predict known and unknown labels for unseen images. Besides, an attention mechanism is introduced into the model, where the attention maps of unknown labels can be used to observe the corresponding objects of an image and to get the semantic information of these unknown labels.
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