首页> 外文期刊>Remote Sensing >PolSAR Image Classification via Learned Superpixels and QCNN Integrating Color Features
【24h】

PolSAR Image Classification via Learned Superpixels and QCNN Integrating Color Features

机译:通过学习的超像素和集成色彩特征的QCNN进行PolSAR图像分类

获取原文
           

摘要

Polarimetric synthetic aperture radar (PolSAR) image classification plays an important role in various PolSAR image application. And many pixel-wise, region-based classification methods have been proposed for PolSAR images. However, most of the pixel-wise methods can not model local spatial relationship of pixels due to negative effects of speckle noise, and most of the region-based methods fail to figure out the regions with the similar polarimetric features. Considering that color features can provide good visual expression and perform well for image interpretation, in this work, based on the PolSAR pseudo-color image over Pauli decomposition, we propose a supervised PolSAR image classification approach combining learned superpixels and quaternion convolutional neural network (QCNN). First, the PolSAR RGB pseudo-color image is formed under Pauli decomposition. Second, we train QCNN with quaternion PolSAR data converted by RGB channels to extract deep color features and obtain pixel-wise classification map. QCNN treats color channels as a quaternion matrix excavating the relationship among the color channels effectively and avoiding information loss. Third, pixel affinity network (PAN) is utilized to generate the learned superpixels of PolSAR pseudo-color image. The learned superpixels allow the local information exploitation available in the presence of speckle noise. Finally, we fuse the pixel-wise classification result and superpixels to acquire the ultimate pixel-wise PolSAR image classification map. Experiments on three real PolSAR data sets show that the proposed approach can obtain 96.56%, 95.59%, and 92.55% accuracy for Flevoland, San Francisco and Oberpfaffenhofen data set, respectively. And compared with state-of-the-art PolSAR image classification methods, the proposed algorithm can obtained competitive classification results.
机译:极化合成孔径雷达(PolSAR)图像分类在各种PolSAR图像应用中起着重要作用。对于PolSAR图像,已经提出了许多基于像素的基于区域的分类方法。但是,由于散斑噪声的负面影响,大多数像素方式无法对像素的局部空间关系进行建模,并且大多数基于区域的方法都无法找出具有相似偏振特征的区域。考虑到颜色特征可以提供良好的视觉表达并能很好地用于图像解释,在这项工作中,基于Pauli分解上的PolSAR伪彩色图像,我们提出了一种将学习到的超像素和四元卷积神经网络(QCNN)结合在一起的监督PolSAR图像分类方法)。首先,在Pauli分解下形成PolSAR RGB伪彩色图像。其次,我们使用由RGB通道转换的四元数PolSAR数据训练QCNN,以提取深色特征并获得像素级分类图。 QCNN将颜色通道视为四元数矩阵,可有效挖掘颜色通道之间的关系并避免信息丢失。第三,像素亲和力网络(PAN)用于生成PolSAR伪彩色图像的学习超像素。所学习的超像素允许在存在斑点噪声的情况下利用本地信息。最后,我们将逐像素分类结果与超像素融合,以获得最终的逐像素PolSAR图像分类图。在三个真实的PolSAR数据集上进行的实验表明,对于Flevoland,San Francisco和Oberpfaffenhofen数据集,该方法可以分别获得96.56%,95.59%和92.55%的精度。与最新的PolSAR图像分类方法相比,该算法可以获得竞争性的分类结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号