In recent years, Fully Convolutional Networks (FCN) has been widely used in various semantic segmentation tasks, including multi-modal remote sensing imagery. How to fuse multi-modal data to improve the segmentation performance has always been a research hotspot. In this paper, a novel end-toend fully convolutional neural network is proposed for semantic segmentation of natural color, infrared imagery and Digital Surface Models (DSM). It is based on a modified DeepUNet and perform the segmentation in a multi-task way. The channels are clustered into groups and processed on different task pipelines. After a series of segmentation and fusion, their shared features and private features are successfully merged together. Experiment results show that the feature fusion network is efficient. And our approach achieves good performance in ISPRS Semantic Labeling Contest (2D).
翻译:近年来,全面革命网络(FCN)被广泛用于包括多式遥感图像在内的各种语义分割任务中,包括多式遥感图像;如何结合多式数据以改善分化性能一直是研究热点。在本文中,为自然颜色、红外图像和数字表面模型的语义分割提议了一个新型端端端全态神经网络(DSM),它以经过修改的DeepUNet为基础,以多式方式进行分解。这些渠道被分组,在不同任务管道上处理。经过一系列分解和融合后,它们的共同特征和私人特征被成功地合并在一起。实验结果表明,特征融合网络是有效的。我们的方法在ISPRS Semanict Label Contect (2D) 中取得了良好的表现。