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An Improved Semantic Segmentation Method for Remote Sensing Images Based on Neural Network

机译:一种改进的语义分割方法基于神经网络的遥感图像

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摘要

Traditional semantic segmentation methods cannot accurately classify high-resolution remote sensing images, due to the difficulty in acquiring the correlations between geophysical objects in these images. To solve the problem, this paper proposes an improved semantic segmentation method for remote sensing images based on neural network. Based on residual network, the proposed algorithm changes the dilated convolution kernels in the dilated spatial pyramid pooling (SPP) module before extracting the correlations between geophysical objects, thus improving the accuracy of segmentation. Next, the high resolution of the input image was maintained through deconvolution, and the semantic segmentation was realized by the pixel-level method. To enhance the robustness of our algorithm, the dataset was expanded through random cropping and stitching of images. Finally, our algorithm was trained and tested on the Potsdam dataset provided by the International Society for Photogrammetry and Remote Sensing (ISPRS). The results show that our algorithm was 1.4% more accurate than the DeepLab v3 Plus. The research results shed new light on the semantic segmentation of high-resolution remote sensing images.
机译:传统的语义分割方法不能准确地分类高分辨率远程遥感图像,由于困难获得地球物理之间的相关性这些图像中的对象。本文提出了一种改进的语义遥感图像分割方法基于神经网络。网络,该算法改变了在扩张扩张卷积核空间金字塔池(SPP)模块提取地球物理之间的相关性对象,从而改善的准确性分割。输入图像保持通过反褶积,和语义分割实现了进行像素级的方法。我们的算法中,数据集被扩展了随机图像裁剪和缝合。我们的算法是训练和测试波茨坦数据集由国际提供摄影测量与遥感(ISPRS)。更精确的比DeepLab v3 + 1.4%。研究结果揭示语义高分辨率遥感的分割图像。

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