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Deeper, Broader and Artier Domain Generalization

机译:更深,更广泛,更典型的域泛化

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The problem of domain generalization is to learn from multiple training domains, and extract a domain-agnostic model that can then be applied to an unseen domain. Domain generalization (DG) has a clear motivation in contexts where there are target domains with distinct characteristics, yet sparse data for training. For example recognition in sketch images, which are distinctly more abstract and rarer than photos. Nevertheless, DG methods have primarily been evaluated on photo-only benchmarks focusing on alleviating the dataset bias where both problems of domain distinctiveness and data sparsity can be minimal. We argue that these benchmarks are overly straightforward, and show that simple deep learning baselines perform surprisingly well on them. In this paper, we make two main contributions: Firstly, we build upon the favorable domain shift-robust properties of deep learning methods, and develop a low-rank parameterized CNN model for end-to-end DG learning. Secondly, we develop a DG benchmark dataset covering photo, sketch, cartoon and painting domains. This is both more practically relevant, and harder (bigger domain shift) than existing benchmarks. The results show that our method outperforms existing DG alternatives, and our dataset provides a more significant DG challenge to drive future research.
机译:域泛化的问题是从多个训练域中学习,然后提取一个可以应用于看不见的域的域名忽视模型。域泛化(DG)在上下文中具有明显的动机,其中有针对具有不同特性的靶域,但训练数据稀疏。例如,在草图图像中识别,这是比照片更明显的抽象和粗糙。尽管如此,DG方法主要在专注于减轻数据集偏差的照片基准上进行评估,其中域名和数据稀疏性可能是最小的。我们认为这些基准非常简单,并且表明简单的深度学习基线对它们表现令人惊讶。在本文中,我们进行了两个主要贡献:首先,我们建立了深度学习方法的有利域移位特性,并开发了用于端到端DG学习的低级参数化CNN模型。其次,我们开发DG基准数据集覆盖照片,素描,卡通和绘画域。这与现有的基准相比,这更实际相关,更难(更大的域移位)。结果表明,我们的方法优于现有的DG替代方案,我们的数据集提供了更加重要的DG挑战,以推动未来的研究。

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