跨域图像分类的简化特征对齐策略

Jin Shin, Hyun Kim
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引用次数: 0

摘要

最近,在深度学习研究中,针对未见领域的领域泛化(DG)的重要性得到了强调。这方面的大多数基准方法都侧重于生成对抗表征或将内容和风格信息从中间特征中分离出来进行学习。然而,这些方法不可避免地增加了训练和推理的时间复杂性。在本研究中,我们提出了一种在不出现过多瓶颈点的情况下提高 DG 性能的方法。我们提出了一种辅助网络结构,将用于特征对齐的映射层置于干层之后,干层是一个基于自适应实例归一化的生成模型,可以调整平均值和标准偏差。无论输入图像的域是什么,这种结构都能持续调整干层的输出特征映射,使其遵循高斯分布。此外,训练和推理都不需要迭代程序,因此其复杂性几乎与不使用 DG 策略的训练相同。实验结果表明,我们的模型优于现有的 DG 基线,在 PACS 基准数据集上的图像分类任务中性能最高,平均准确率高出 0.71%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simplified Feature Alignment Strategy for Image Classification Across Domains
Recently, in deep learning research, the importance of domain generalization (DG) for unseen domains has been emphasized. Most of the baseline methodologies for this focus on generating adversarial representations or separating content and style information from intermediate features for learning. However, these approaches inevitably increase the time complexity for both training and inference. In this study, we propose an approach to improve DG performance without excessive bottleneck points. We suggest an auxiliary network structure that places a mapping layer for feature alignment after the stem layer, a generative model based on an adaptive instance normalization that can adjust mean and standard deviation. This structure consistently adjusts the output feature maps of the stem layer to follow a Gaussian distribution regardless of the domain used as the input image. Moreover, both training and inference are possible without iterative routines, making their complexity nearly identical to training without the DG strategies. Experimental results show that our model outperforms the existing DG baseline with the highest performance in image classification tasks by an average accuracy of 0.71% higher on the PACS benchmarking dataset.
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