论文标题
遥感图像中的新型深层结构U-NET用于海地分割
A novel Deep Structure U-Net for Sea-Land Segmentation in Remote Sensing Images
论文作者
论文摘要
Sea-Land细分是遥感中许多关键应用的重要过程。由于海洋和土地之间的复杂而多样化的过渡,适用于遥感图像的适当操作的海地细分仍然是一个具有挑战性的问题。尽管已经开发了几个卷积神经网络(CNN)进行海地细分,但这些CNN的性能远非预期的目标。本文在复杂且高密度的遥感图像中介绍了一种新型的深层神经网络结构,用于像素的海地分割,一个残留的密度U-NET(RDU-NET)。 RDU-NET是下采样和上采样路径的组合,以获得令人满意的结果。在每个向上和向上采样路径中,除了卷积层外,还提出了几个密集连接的残留网络块,以系统地汇总多尺度的上下文信息。每个密集的网络块都包含多级卷积层,短距离连接和身份映射连接,这些连接有助于在网络中重新使用功能,并充分利用原始图像中的层次结构功能。这些提议的块具有一定数量的连接,这些连接的设计较短,层之间的距离向后传播较短,并且可以显着改善细分结果,同时最大程度地减少计算成本。我们已经在两个真实数据集上进行了广泛的实验,并将ISPRS进行了比较,并将所提出的rdunet与密集网络的几种变体进行了比较。实验结果表明,RDUNET的表现优于海地分割任务的其他最先进方法。
Sea-land segmentation is an important process for many key applications in remote sensing. Proper operative sea-land segmentation for remote sensing images remains a challenging issue due to complex and diverse transition between sea and lands. Although several Convolutional Neural Networks (CNNs) have been developed for sea-land segmentation, the performance of these CNNs is far from the expected target. This paper presents a novel deep neural network structure for pixel-wise sea-land segmentation, a Residual Dense U-Net (RDU-Net), in complex and high-density remote sensing images. RDU-Net is a combination of both down-sampling and up-sampling paths to achieve satisfactory results. In each down- and up-sampling path, in addition to the convolution layers, several densely connected residual network blocks are proposed to systematically aggregate multi-scale contextual information. Each dense network block contains multilevel convolution layers, short-range connections and an identity mapping connection which facilitates features re-use in the network and makes full use of the hierarchical features from the original images. These proposed blocks have a certain number of connections that are designed with shorter distance backpropagation between the layers and can significantly improve segmentation results whilst minimizing computational costs. We have performed extensive experiments on two real datasets Google Earth and ISPRS and compare the proposed RDUNet against several variations of Dense Networks. The experimental results show that RDUNet outperforms the other state-of-the-art approaches on the sea-land segmentation tasks.