Semantic segmentation of remote sensing image based on deep fusion networks and conditional random field

Chun-lei Xiao, Yu Li, Hongqun Zhang, Jun Chen
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引用次数: 4

Abstract

Image semantic segmentation refers to segmenting an image into several groups of pixel regions with different specific semantic meanings and identifying the categories of each region. In recent years, the common semantic segmentation methods that are based on Convolutional Neural Networks(CNN) have realised the pixel-to-pixel image semantic segmentation. They can avoid the problems of artificial design and selection of features in traditional image semantic segmentation methods. As a result of the pooling operation and lack of context information, the detailed information of images is neglected, the precision of the final image semantic segmentation result is low and the segmentation edge is inaccurate. Therefore, this study proposes a semantic segmentation method for remote sensing image on the basis of Deep Fusion Networks(DFN) combined with a conditional random field model.The method initially builds a DFN model in a Fully Convolutional Network(FCN) framework with a deconvolutional fusion structure.On the one hand, the multiscale features can be extracted through the deep networks, which can avoid the artificial design and selection of features to improve the generalisation ability of the model. On the other hand, the multiscale information is used in the model with the help of the deconvolutional fusion structure. The processing accuracy of the model is also improved by fusing the shallow detail information and deep semantic information. Fundamentally, the fully connected conditional random field is introduced to supplement the spatial context information towards precisely locating the boundary and obtaining final semantic segmentation results.From this study, we can draw the following conclusions:(1)With the increase in the depth of the fusion layer, detailed information becomes abundant, the semantic segmentation results become refined and the edge contour becomes close to the label image;(2) The fully connected conditional random field model synthesises the global and local information of the remote sensing image and further improves the efficiency and accuracy of the final semantic segmentation results.
基于深度融合网络和条件随机场的遥感图像语义分割
图像语义分割是指将图像分割成几组具有不同具体语义的像素区域,并识别每个区域的类别。近年来,常用的基于卷积神经网络(CNN)的语义分割方法已经实现了像素间的图像语义分割。它可以避免传统图像语义分割方法中存在的人为设计和特征选择问题。由于池化操作和缺乏上下文信息,忽略了图像的详细信息,最终图像语义分割结果的精度较低,分割边缘不准确。因此,本研究提出了一种基于深度融合网络(Deep Fusion Networks, DFN)结合条件随机场模型的遥感图像语义分割方法。该方法首先在具有反卷积融合结构的全卷积网络(FCN)框架中建立DFN模型。一方面,通过深度网络可以提取多尺度特征,避免了特征的人为设计和选择,提高了模型的泛化能力;另一方面,利用反卷积融合结构将多尺度信息应用到模型中。通过融合浅层细节信息和深层语义信息,提高了模型的处理精度。从根本上说,引入全连通条件随机场来补充空间上下文信息,以精确定位边界并获得最终的语义分割结果。通过本研究,我们可以得出以下结论:(1)随着融合层深度的增加,详细信息变得丰富,语义分割结果变得精细,边缘轮廓越来越接近标签图像;(2)全连通条件随机场模型综合了遥感图像的全局和局部信息,进一步提高了最终语义分割结果的效率和准确性。
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