Progressive Few-Shot Adaptation of Generative Model with Align-Free Spatial Correlation

J. Moon, Hyunjun Kim, Jae-Pil Heo
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引用次数: 1

Abstract

In few-shot generative model adaptation, the model for target domain is prone to the mode-collapse. Recent studies attempted to mitigate the problem by matching the relationship among samples generated from the same latent codes in source and target domains. The objective is further extended to image patch-level to transfer the spatial correlation within an instance. However, the patch-level approach assumes the consistency of spatial structure between source and target domains. For example, the positions of eyes in two domains are almost identical. Thus, it can bring visual artifacts if source and target domain images are not nicely aligned. In this paper, we propose a few-shot generative model adaptation method free from such assumption, based on a motivation that generative models are progressively adapting from the source domain to the target domain. Such progressive changes allow us to identify semantically coherent image regions between instances generated by models at a neighboring training iteration to consider the spatial correlation. We also propose an importance-based patch selection strategy to reduce the complexity of patch-level correlation matching. Our method shows the state-of-the-art few-shot domain adaptation performance in the qualitative and quantitative evaluations.
无对齐空间相关生成模型的渐进式少镜头自适应
在少量生成模型自适应中,目标域的模型容易发生模型崩溃。最近的研究试图通过在源域和目标域中匹配由相同潜在代码生成的样本之间的关系来缓解这个问题。将目标进一步扩展到图像补丁级,以传递实例内的空间相关性。然而,补丁级方法假设源域和目标域之间的空间结构是一致的。例如,眼睛在两个域中的位置几乎是相同的。因此,如果源和目标域图像没有很好地对齐,它可能会带来视觉上的伪影。本文基于生成模型从源域向目标域逐步自适应的动机,提出了一种不考虑这种假设的少镜头生成模型自适应方法。这种渐进的变化使我们能够在相邻的训练迭代中识别模型生成的实例之间的语义连贯图像区域,以考虑空间相关性。我们还提出了一种基于重要性的补丁选择策略,以降低补丁级相关匹配的复杂性。我们的方法在定性和定量评价中显示了最先进的少镜头域自适应性能。
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