主动域自适应的局部不确定能量传递

IF 13.7
Yulin Sun;Guangming Shi;Weisheng Dong;Xin Li;Le Dong;Xuemei Xie
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引用次数: 0

摘要

主动域自适应(Active Domain Adaptation, ADA)通过选择少量的目标样本标签,提高了知识从有标记的源领域向未标记的目标领域的转移效率。然而,现有的大多数主动采样方法都忽略了目标域中邻居的局部不确定性,从而更容易识别出对模型有害的异常样本。为了解决这一问题,本文提出了一种新的主动域自适应方法——局部不确定性能量转移(LUET),该方法将局部不确定性混淆和能量转移对齐约束的主动学习整合到一个统一的框架中。首先,在主动学习模块中,通过局部不确定性能量选择和熵加权类混淆选择,选择目标域的不确定性困难样本和代表性样本;基于局部不确定性能量的主动学习策略可以避免在目标域中选择异常样本。其次,针对域漂移引起的识别问题,采用全局和局部能量转移对齐约束模块消除域间隙,提高识别精度;最后,我们使用负对数似然损失对源域和查询样本进行监督学习。随着基于样本的能量度量的引入,主动学习策略更接近于域对齐。在多个领域自适应数据集上的实验表明,我们的LUET可以取得出色的结果,并且优于现有的最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Uncertainty Energy Transfer for Active Domain Adaptation
Active Domain Adaptation (ADA) improves knowledge transfer efficiency from the labeled source domain to the unlabeled target domain by selecting a few target sample labels. However, most existing active sampling methods ignore the local uncertainty of neighbors in the target domain, making it easier to pick out anomalous samples that are detrimental to the model. To address this problem, we present a new approach to active domain adaptation called Local Uncertainty Energy Transfer (LUET), which integrates active learning of local uncertainty confusion and energy transfer alignment constraints into a unified framework. First, in the active learning module, the uncertainty difficult and representative samples from the target domain are selected through local uncertainty energy selection and entropy-weighted class confusion selection. And the active learning strategy based on local uncertainty energy will avoid selecting anomalous samples in the target domain. Second, for the discrimination issue caused by domain shift, we use a global and local energy-transfer alignment constraint module to eliminate the domain gap and improve accuracy. Finally, we used negative log-likelihood loss for supervised learning of source domains and query samples. With the introduction of sample-based energy metrics, the active learning strategy is more closely with the domain alignment. Experiments on multiple domain-adaptive datasets have demonstrated that our LUET can achieve outstanding results and outperform existing state-of-the-art approaches.
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