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Class-Specific Reconstruction Transfer Learning for Visual Recognition Across Domains

机译:跨域视觉认可的类别特定的重建转移学习

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Subspace learning and reconstruction have been widely explored in recent transfer learning work. Generally, a specially designed projection and reconstruction transfer functions bridging multiple domains for heterogeneous knowledge sharing are wanted. However, we argue that the existing subspace reconstruction based domain adaptation algorithms neglect the class prior, such that the learned transfer function is biased, especially when data scarcity of some class is encountered. Different from those previous methods, in this article, we propose a novel class-wise reconstruction-based adaptation method called Class-specific Reconstruction Transfer Learning (CRTL), which optimizes a well modeled transfer loss function by fully exploiting intra-class dependency and inter-class independency. The merits of the CRTL are three-fold. 1) Using a class-specific reconstruction matrix to align the source domain with the target domain fully exploits the class prior in modeling the domain distribution consistency, which benefits the cross-domain classification. 2) Furthermore, to keep the intrinsic relationship between data and labels after feature augmentation, a projected Hilbert-Schmidt Independence Criterion (pHSIC), that measures the dependency between data and label, is first proposed in transfer learning community by mapping the data from raw space to RKHS. 3) In addition, by imposing low-rank and sparse constraints on the class-specific reconstruction coefficient matrix, the global and local data structure that contributes to domain correlation can be effectively preserved. Extensive experiments on challenging benchmark datasets demonstrate the superiority of the proposed method over state-of-the-art representation-based domain adaptation methods. The demo code is available in https://github.com/wangshanshanCQU/CRTL.
机译:在最近的转移学习工作中已被广泛探索子空间学习和重建。通常,需要一种专门设计的投影和重建传递函数,用于桥接用于异构知识共享的多个域。但是,我们认为,现有的子空间重建基于域的域适配算法忽略了该类的前提,使得学习的传递函数被偏置,特别是当遇到某些类的数据稀缺时。与以前的方法不同,我们提出了一种新的基于类别的基于类重建的适应方法,称为特定的类别重建传输学习(CRTL),其通过充分利用类依赖性和互联性来优化良好的模型传输损失功能 - CLASS独立性。 CRTL的优点是三倍。 1)使用类别特定的重建矩阵将源域与目标域对齐,在建模域分布一致性之前完全利用类,这有利于跨域分类。 2)此外,为了在功能增强之后保持数据和标签之间的内在关系,首先通过从RAW映射数据来转移学习社区来衡量数据和标签之间的依赖性的预计HILBERT-SCHMIDT独立性标准(PHSIC)。空间到rkhs。 3)另外,通过对类别特定的重建系数矩阵施加低级和稀疏约束,可以有效地保留有助于域相关的全局和局部数据结构。关于具有挑战性的基准数据集的广泛实验证明了基于最先进的基于域的域适应方法的提出方法的优越性。 DEMO代码在https://github.com/wangshanshancqu/crtl中提供。

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