In visual domain adaptation (DA), separating the domain-specific characteristics from the domain-invariant representations is an ill-posed problem. Existing methods apply different kinds of priors or directly minimize the domain discrepancy to address this problem, which lack flexibility in handling real-world situations. Another research pipeline expresses the domain-specific information as a gradual transferring process, which tends to be suboptimal in accurately removing the domain-specific properties. In this paper, we address the modeling of domain-invariant and domain-specific information from the heuristic search perspective. We identify the characteristics in the existing representations that lead to larger domain discrepancy as the heuristic representations. With the guidance of heuristic representations, we formulate a principled framework of Heuristic Domain Adaptation (HDA) with well-founded theoretical guarantees. To perform HDA, the cosine similarity scores and independence measurements between domain-invariant and domain-specific representations are cast into the constraints at the initial and final states during the learning procedure. Similar to the final condition of heuristic search, we further derive a constraint enforcing the final range of heuristic network output to be small. Accordingly, we propose Heuristic Domain Adaptation Network (HDAN), which explicitly learns the domain-invariant and domain-specific representations with the above mentioned constraints. Extensive experiments show that HDAN has exceeded state-of-the-art on unsupervised DA, multi-source DA and semi-supervised DA. The code is available at https://github.com/cuishuhao/HDA.
翻译:在视觉领域适应(DA)中,将特定域特性与域差异表示法区分开来是一个不恰当的问题。现有方法采用不同的前期方法或直接将领域差异降到最低程度,以解决这一问题,因为在处理现实世界局势方面缺乏灵活性。另一个研究管道将特定域信息表述为一个渐进转移过程,在准确消除特定域特性方面往往不够理想。在本文件中,我们从超常搜索角度处理域异性和特定域信息模型化问题。我们查明了导致更大域差异的现有表示法的特征,作为超常表示法。在超常表现法的指导下,我们制定了海尔特多域适应(HDA)原则框架,并有完善的理论保证。为了执行HDA, 域异同异性分数和具体域特性的测量往往不够完美。在学习过程中,初始和最终状态的制约。类似超常态搜索的最后条件,我们还发现现有超常域域域域域域域域域域域域域域域域网产出在超常值方面有限制。因此,我们提议DA-DRA 明确学习超额域域。