基于循环一致对抗网络的航空图像语义分割领域自适应

F. Schenkel, W. Middelmann
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引用次数: 3

摘要

在许多遥感应用中,语义分割是航空影像分析的一项重要的计算机视觉任务。由于数据的大量可用性,因此可以为此目的设计高效的基于卷积神经网络的深度学习模型。但是,当这些方法不加任何修改地应用于与传感器或环境影响有关的其他方面具有不同特征的数据时,通常表现出较弱的性能。为了提高这些方法的性能,可以采用领域自适应方法。在接下来的工作中,我们希望提出一种用于语义分割的无监督域自适应方法。我们在源域数据集上训练一个编码器-解码器模型作为任务应用,并将网络调整到目标域。自适应过程基于风格迁移组件,该组件使用周期一致的对抗网络实现。通过对任务模型的不断适应,提高了网络的泛化能力,提高了任务方法在目标域上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain Adaptation for Semantic Segmentation of Aerial Imagery Using Cycle-Consistent Adversarial Networks
Semantic segmentation is an important computer vision task for the analysis of aerial imagery in many remote sensing applications. Due to the large availability of data it is possible to design efficient convolutional neural network based deep learning models for this purpose. But these methods usually show a weak performance when they are applied without any modifications to data from another domain with different characteristics relating to aspects concerning the sensor or environmental influences. To improve the performance of these methods domain adaptation approaches can be employed. In the following work, we want to present a method for unsupervised domain adaptation for semantic segmentation. We trained an encoder-decoder model on the source domain dataset as task application and adjusted the network to the target domain. The adaptation process is based on a style transfer component, which is realized using a cycle-consistent adversarial network. Through a continuous adaptation of the task model we achieved a higher generalization of the network and increased the task method performance on the target domain.
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