Deep convolutional neural networks (DCNNs) based remote sensing (RS) image semantic segmentation technology has achieved great success used in many real-world applications such as geographic element analysis. However, strong dependency on annotated data of specific scene makes it hard for DCNNs to fit different RS scenes. To solve this problem, recent works gradually focus on cross-domain RS image semantic segmentation task. In this task, different ground sampling distance, remote sensing sensor variation and different geographical landscapes are three main factors causing dramatic domain shift between source and target images. To decrease the negative influence of domain shift, we propose a self-training guided disentangled adaptation network (ST-DASegNet). We first propose source student backbone and target student backbone to respectively extract the source-style and target-style feature for both source and target images. Towards the intermediate output feature maps of each backbone, we adopt adversarial learning for alignment. Then, we propose a domain disentangled module to extract the universal feature and purify the distinct feature of source-style and target-style features. Finally, these two features are fused and served as input of source student decoder and target student decoder to generate final predictions. Based on our proposed domain disentangled module, we further propose exponential moving average (EMA) based cross-domain separated self-training mechanism to ease the instability and disadvantageous effect during adversarial optimization. Extensive experiments and analysis on benchmark RS datasets show that ST-DASegNet outperforms previous methods on cross-domain RS image semantic segmentation task and achieves state-of-the-art (SOTA) results. Our code is available at https://github.com/cv516Buaa/ST-DASegNet.
翻译:深 convolution 神经网络(DCNNS) 基于深层神经网络(DCNNS) 的遥感(RS) 图像内断层技术(RS) 已经在许多真实世界应用中取得了巨大成功,例如地理元素分析。然而,由于对特定场景的附加说明数据的依赖性强,DCNNS很难适应不同的RS场景。为了解决这个问题,最近的工作逐渐侧重于跨域 RS 图像内断层。在这一任务中,不同的地面取样距离、遥感传感器变异和不同的地理景观是导致源与目标图像之间显著域域间移动的主要因素。为了减少域变换的负面影响,我们建议建立一个自我训练的导向分散的内向扭曲的 RS-SegNet 适应网络(ST-DASegNet) 。我们首先提出源的骨干和目标骨干和目标骨干和目标骨干和目标骨干和学生骨干分别提取源-Sender-Sdelax 流流流路段。我们提出一个域间不相交错的内嵌式模块,然后我们提出一个局间不相交错的调模块。