DWT+DWT:使用离散小波变换和深度白化变换的深度学习领域泛化技术

Jin Shin, Hyun Kim
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引用次数: 0

摘要

最近,人们对具有鲁棒泛化性能的深度学习框架的需求越来越大,例如在自动驾驶环境中。现有的卷积神经网络领域泛化方法都是主动利用特征映射与生成模型或归一化技术来区分特定领域的信息。然而,增强图像对于测量风格灵敏度是必不可少的。本研究表明,在不需要单独增强图像的情况下,可以通过颜色空间分离和频率分解从原始图像中提取风格信息。因此,它可以作为一种独立于现有网络模型的方法。在使用城市场景数据集训练的语义分割模型中,该方法的mIoU比现有方法提高了1.54%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DWT+DWT: Deep Learning Domain Generalization Techniques Using Discrete Wavelet Transform with Deep Whitening Transform
Recently, there is a growing demand for a deep learning framework with robust generalization performance in real-world domains, such as an autonomous driving environment. The existing domain generalization methodologies for convolutional neural networks have been designed to actively utilize the feature map with the generative model or normalization techniques to distinguish domain-specific information. However, augmented images are essential for measuring style sensitivity. This study shows that style information can be extracted from an original image through color space separation and frequency decomposition without a separate augmented image. Therefore, it can be used as a method independent of existing network models. The proposed method shows an mIoU improvement by 1.54% compared to the existing method in the semantic segmentation model trained using urban scene datasets.
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