Semantic segmentation is a key technique involved in automatic interpretation of high-resolution remote sensing (HRS) imagery and has drawn much attention in the remote sensing community. Deep convolutional neural networks (DCNNs) have been successfully applied to the HRS imagery semantic segmentation task due to their hierarchical representation ability. However, the heavy dependency on a large number of training data with dense annotation and the sensitiveness to the variation of data distribution severely restrict the potential application of DCNNs for the semantic segmentation of HRS imagery. This study proposes a novel unsupervised domain adaptation semantic segmentation network (MemoryAdaptNet) for the semantic segmentation of HRS imagery. MemoryAdaptNet constructs an output space adversarial learning scheme to bridge the domain distribution discrepancy between source domain and target domain and to narrow the influence of domain shift. Specifically, we embed an invariant feature memory module to store invariant domain-level context information because the features obtained from adversarial learning only tend to represent the variant feature of current limited inputs. This module is integrated by a category attention-driven invariant domain-level context aggregation module to current pseudo invariant feature for further augmenting the pixel representations. An entropy-based pseudo label filtering strategy is used to update the memory module with high-confident pseudo invariant feature of current target images. Extensive experiments under three cross-domain tasks indicate that our proposed MemoryAdaptNet is remarkably superior to the state-of-the-art methods.
翻译:语义分解是自动解释高分辨率遥感图像的关键技术之一,在遥感界引起了许多注意。深相神经网络(DCNN)由于具有等级代表性能力,已经成功地应用于HRS图像的语义分解任务。然而,大量依赖大量培训数据进行密集的注解,对数据分布变化的敏感度严重限制了DCNN可用于HRS图像的语义分解的可能性。本研究报告建议为HRS图像的语义分解成功应用一种新型不受监督的域域性调解析网络(MemoryAdaptNet)。MemorAdaptNet建立了一个输出空间对抗性学习机制,以弥合源域和目标域间在源域与目标间差异之间的域分布差异,缩小域移的影响。具体地说,我们嵌入一个内置特性存储域域级信息的内存模块,因为从对抗性学习获得的特征只能代表当前有限投入的变异特性。这个模块由基于当前正等级的高级图像分级图像分解到当前高级图像级的高级图像分流化模型中,用于在基于当前正态版面版面版面版面标签模块中进一步增加的注意和正态版面图像分解。