PMGNet: Disentanglement and entanglement benefit mutually for compositional zero-shot learning

IF 4.3 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Yu Liu , Jianghao Li , Yanyi Zhang , Qi Jia , Weimin Wang , Nan Pu , Nicu Sebe
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引用次数: 0

Abstract

Compositional zero-shot learning (CZSL) aims to model compositions of two primitives (i.e., attributes and objects) to classify unseen attribute-object pairs. Most studies are devoted to integrating disentanglement and entanglement strategies to circumvent the trade-off between contextuality and generalizability. Indeed, the two strategies can mutually benefit when used together. Nevertheless, they neglect the significance of developing mutual guidance between the two strategies. In this work, we take full advantage of guidance from disentanglement to entanglement and vice versa. Additionally, we propose exploring multi-scale feature learning to achieve fine-grained mutual guidance in a progressive framework. Our approach, termed Progressive Mutual Guidance Network (PMGNet), unifies disentanglement–entanglement representation learning, allowing them to learn from and teach each other progressively in one unified model. Furthermore, to alleviate overfitting recognition on seen pairs, we adopt a relaxed cross-entropy loss to train PMGNet, without an increase of time and memory cost. Extensive experiments on three benchmarks demonstrate that our method achieves distinct improvements, reaching state-of-the-art performance. Moreover, PMGNet exhibits promising performance under the most challenging open-world CZSL setting, especially for unseen pairs.
PMGNet:互不纠缠和纠缠互利,促进合成零点学习
组合零点学习(CZSL)旨在为两个基元(即属性和对象)的组合建模,从而对未见的属性-对象对进行分类。大多数研究都致力于整合非纠缠和纠缠策略,以规避情境性和概括性之间的权衡。事实上,这两种策略结合使用可以互惠互利。然而,这些研究忽视了在两种策略之间发展相互引导的意义。在这项工作中,我们充分利用了从非纠缠到纠缠以及反之亦然的引导优势。此外,我们还提出探索多尺度特征学习,以在渐进框架中实现细粒度的相互引导。我们的方法被称为渐进式相互引导网络(Progressive Mutual Guidance Network,PMGNet),它将非纠缠-纠缠表示学习统一起来,使它们能够在一个统一的模型中逐步相互学习和传授。此外,为了减轻对所见对的过拟合识别,我们采用了一种宽松的交叉熵损失来训练 PMGNet,而不会增加时间和内存成本。在三个基准上进行的广泛实验表明,我们的方法取得了明显的改进,达到了最先进的性能。此外,在最具挑战性的开放世界 CZSL 环境下,PMGNet 表现出了良好的性能,尤其是对于未识别的配对。
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来源期刊
Computer Vision and Image Understanding
Computer Vision and Image Understanding 工程技术-工程:电子与电气
CiteScore
7.80
自引率
4.40%
发文量
112
审稿时长
79 days
期刊介绍: The central focus of this journal is the computer analysis of pictorial information. Computer Vision and Image Understanding publishes papers covering all aspects of image analysis from the low-level, iconic processes of early vision to the high-level, symbolic processes of recognition and interpretation. A wide range of topics in the image understanding area is covered, including papers offering insights that differ from predominant views. Research Areas Include: • Theory • Early vision • Data structures and representations • Shape • Range • Motion • Matching and recognition • Architecture and languages • Vision systems
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