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首页> 外文期刊>International journal of remote sensing >Permuted Spectral and Permuted Spectral-Spatial CNN Models for PolSAR-Multispectral Data based Land Cover Classification
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Permuted Spectral and Permuted Spectral-Spatial CNN Models for PolSAR-Multispectral Data based Land Cover Classification

机译:基于Polsar-MultiSpectral数据的土地覆盖分类允许的频谱和允许的光谱空间CNN模型

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摘要

It is a challenge to develop methods which can process the polarimetric synthetic aperture radar (PolSAR) and multispectral (MS) data modalities together without losing information from either for remote sensing applications. This paper presents a study which attempts to introduce novel deep learning-based remote sensing data processing frameworks that utilize convolutional neural networks (CNNs) in both spatial and spectral domains to perform land cover (LC) classification with PolSAR-MS data. Also since earth observation remotely sensed data have usually larger spectral depth than normal camera image data, exploiting the spectral information in remote sensing (RS) data is crucial as well. In fact, convolutions in the sub-spectral space are intuitive and alternative to the process of feature selection. Recently, researchers have gained success in exploiting the spectral information of RS data, especially the hyperspectral data with CNNs. In this paper, exploitation of the spectral information in the PolSAR-MS data via a permuted localized spectral convolution along with localized spatial convolution is proposed. Further, the study in this paper also establishes the significance of performing permuted localized spectral convolutions over non-localized or localized spectral convolutions. Two models are proposed, namely a permuted local spectral convolutional network (Perm-LS-CNN) and a permuted local spectral-spatial convolutional network (Perm-LSS-CNN). These models are trained on ground truth class data points measured directly on the terrain. The evaluation of the generalization performance is done using ground truth knowledge on selected well-known regions in the study areas. Comparison with other popular machine learning classifiers shows that the Perm-LSS-CNN model provides better classification results in terms of both accuracy and generalization.
机译:这是开发一种能够处理所述极化合成孔径雷达(极化SAR)和多光谱(MS)数据模式一起而不偏离任一丢失信息为遥感应用方法是一个挑战。本文提出了一种研究,试图引入新颖深基于学习的遥感数据处理利用在空间和光谱域卷积神经网络(细胞神经网络)与极化SAR-MS数据执行土地覆盖(LC)的分类框架。此外,由于地球观测遥感数据具有通常较大的光谱深度比正常相机的图像数据,利用遥感光谱信息(RS)的数据是以及至关重要。事实上,在子光谱空间卷积是直观和替代特征选择的过程。最近,研究人员在开发遥感数据,特别是与细胞神经网络的高光谱数据的光谱信息获得成功。在本文中,通过在极化SAR-MS数据的频谱信息利用一个置换局部光谱卷积具有局部空间卷积沿着提出。此外,在本文中所述的研究还确立了在执行置换过非本地化或局部光谱卷积局部光谱卷积的意义。两个模型提出,即一个置换后的本地频谱卷积网络(彼尔姆-LS-CNN)和一个置换本地谱空间卷积网络(彼尔姆-LSS-CNN)。这些模型被训练在直接在地形测量地面实况类的数据点。泛化性能的评价用在研究领域选择知名地区的地面真理的知识来完成。比较与其他流行的机器学习的分类显示,烫发LSS-CNN模型的精度和推广方面提供了更好的分类结果。

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