Han Na, Wu Jigang, Fang Xiaozhao, Teng Shaohua, Zhou Guoxu, Xie Shengli, Li Xuelong
IEEE Trans Image Process. 2020 Sep 24;PP. doi: 10.1109/TIP.2020.3024728.
Dictionary learning plays a significant role in the field of machine learning. Existing works mainly focus on learning dictionary from a single domain. In this paper, we propose a novel projective double reconstructions (PDR) based dictionary learning algorithm for cross-domain recognition. Owing the distribution discrepancy between different domains, the label information is hard utilized for improving discriminability of dictionary fully. Thus, we propose a more flexible label consistent term and associate it with each dictionary item, which makes the reconstruction coefficients have more discriminability as much as possible. Due to the intrinsic correlation between cross-domain data, the data should be reconstructed with each other. Based on this consideration, we further propose a projective double reconstructions scheme to guarantee that the learned dictionary has the abilities of data itself reconstruction and data crossreconstruction. This also guarantees that the data from different domains can be boosted mutually for obtaining a good data alignment, making the learned dictionary have more transferability. We integrate the double reconstructions, label consistency constraint and classifier learning into a unified objective and its solution can be obtained by proposed optimization algorithm that is more efficient than the conventional l1 optimization based dictionary learning methods. The experiments show that the proposed PDR not only greatly reduces the time complexity for both training and testing, but also outperforms over the stateof- the-art methods.
字典学习在机器学习领域发挥着重要作用。现有工作主要集中于从单一领域学习字典。在本文中,我们提出了一种基于新颖的投影双重重构(PDR)的字典学习算法用于跨域识别。由于不同域之间的分布差异,标签信息难以被充分利用来提高字典的可辨别性。因此,我们提出了一个更灵活的标签一致性项并将其与每个字典项相关联,这使得重构系数尽可能具有更多的可辨别性。由于跨域数据之间的内在相关性,数据应该相互重构。基于此考虑,我们进一步提出了一种投影双重重构方案,以确保所学习的字典具有数据自身重构和数据交叉重构的能力。这也确保了来自不同域的数据可以相互增强以获得良好的数据对齐,使得所学习的字典具有更强的可迁移性。我们将双重重构、标签一致性约束和分类器学习集成到一个统一的目标中,并且其解决方案可以通过所提出的优化算法获得,该算法比传统的基于l1优化的字典学习方法更高效。实验表明,所提出的PDR不仅大大降低了训练和测试的时间复杂度,而且优于现有最先进的方法。