一种主动多目标域自适应策略:渐进式类原型校正

IF 8.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Yanan Zhu;Jiaqiu Ai;Le Wu;Dan Guo;Wei Jia;Richang Hong
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引用次数: 0

摘要

与单源到单目标(1S1T)域自适应相比,单源到多目标(1SmT)域自适应更实用,但也更具挑战性。在1SmT场景中,不同目标域之间特征分布的显著差异增加了模型适应多域的难度。此外,1SmT需要有效地转移到每个目标域,同时保持源域的性能,这要求模型具有更高的泛化能力。在1SmT场景中,主动域自适应方法通过纳入少量目标域样本来提高泛化效果,但由于潜在的采样偏差和离群干扰,这些方法很少应用于1SmT。为了解决这一问题,我们提出了渐进式原型优化(PPR),一种将1SmT与主动学习相结合的主动多目标领域自适应方法,以增强跨领域知识迁移。具体而言,采用不确定性评估策略从多个目标域中选择有代表性的样本,形成候选集进行模型训练。基于Lindeberg—Levy中心极限定理,我们使用修正的原型统计量从高斯分布中采样,以增加分类器的特征输入,允许模型学习域之间的过渡信息。最后,使用映射矩阵进行跨域对齐,解决不完全类覆盖和离群干扰问题。在多个基准数据集上的大量实验证明了PPR的卓越性能,在PACS数据集上提高了6.35%,在遥感数据集上提高了17.32%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Active Multi-Target Domain Adaptation Strategy: Progressive Class Prototype Rectification
Compared to single-source to single-target (1S1T) domain adaptation, single-source to multi-target (1SmT) domain adaptation is more practical but also more challenging. In 1SmT scenarios, the significant differences in feature distributions between various target domains increase the difficulty for models to adapt to multiple domains. Moreover, 1SmT requires effective transfer to each target domain while maintaining performance in the source domain, demanding higher generalization capabilities from the model. In 1S1T scenarios, active domain adaptation methods improve generalization by incorporating a few target domain samples, but these methods are rarely applied in 1SmT due to potential sampling bias and outlier interference. To address this, we propose Progressive Prototype Refinement (PPR), an active multi-target domain adaptation method combining 1SmT with active learning to enhance cross-domain knowledge transfer. Specifically, an uncertainty assessment strategy is used to select representative samples from multiple target domains, forming a candidate set for model training. Based on the Lindeberg--Levy central limit theorem, we sample from a Gaussian distribution using corrected prototype statistics to augment the classifier's feature input, allowing the model to learn transitional information between domains. Finally, a mapping matrix is used for cross-domain alignment, addressing incomplete class coverage and outlier interference. Extensive experiments on multiple benchmark datasets demonstrate PPR's superior performance, with a 6.35% improvement on the PACS dataset and a 17.32% improvement on the Remote Sensing dataset.
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来源期刊
IEEE Transactions on Multimedia
IEEE Transactions on Multimedia 工程技术-电信学
CiteScore
11.70
自引率
11.00%
发文量
576
审稿时长
5.5 months
期刊介绍: The IEEE Transactions on Multimedia delves into diverse aspects of multimedia technology and applications, covering circuits, networking, signal processing, systems, software, and systems integration. The scope aligns with the Fields of Interest of the sponsors, ensuring a comprehensive exploration of research in multimedia.
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