知识转移的注意力桥接网络

Kunpeng Li, Yulun Zhang, Kai Li, Yuanyuan Li, Y. Fu
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引用次数: 22

摘要

由反向传播梯度获得的深度神经网络的注意力可以有效地解释网络的决策。它们可以进一步用于显式访问对特定模式的网络响应。考虑到来自不同领域的同一类别对象具有相似的视觉模式,我们建议将网络注意力视为连接跨领域对象的桥梁。在本文中,我们使用来自源领域的知识来指导网络对与目标领域共享的类别的响应。通过权值共享和领域对手训练,可以通过正则化网络对目标领域中相同类别的响应来成功地转移这些知识。具体来说,我们将前景先验从简单的单标签数据集转移到另一个复杂的多标签数据集,从而改善了注意力图。对弱监督语义分割任务的实验表明了该方法的有效性。此外,我们进一步探索并验证了该方法能够在领域自适应和领域泛化设置下提高分类网络的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention Bridging Network for Knowledge Transfer
The attention of a deep neural network obtained by back-propagating gradients can effectively explain the decision of the network. They can further be used to explicitly access to the network response to a specific pattern. Considering objects of the same category but from different domains share similar visual patterns, we propose to treat the network attention as a bridge to connect objects across domains. In this paper, we use knowledge from the source domain to guide the network's response to categories shared with the target domain. With weights sharing and domain adversary training, this knowledge can be successfully transferred by regularizing the network's response to the same category in the target domain. Specifically, we transfer the foreground prior from a simple single-label dataset to another complex multi-label dataset, leading to improvement of attention maps. Experiments about the weakly-supervised semantic segmentation task show the effectiveness of our method. Besides, we further explore and validate that the proposed method is able to improve the generalization ability of a classification network in domain adaptation and domain generalization settings.
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