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Supervised cross-fusion method: a new triplet approach to fuse thermal, radar, and optical satellite data for land use classification

机译:有监督的交叉融合方法:一种新的三重态方法,可以融合热,雷达和光学卫星数据,用于土地用途分类

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This study presents a new fusion method namely supervised cross-fusion method to improve the capability of fused thermal, radar, and optical images for classification. The proposed cross-fusion method is a combination of pixel-based and supervised feature-based fusion of thermal, radar, and optical data. The pixel-based fusion was applied to fuse optical data of Sentinel-2 and Landsat 8. According to correlation coefficient (CR) and signal to noise ratio (SNR), among the used pixel-based fusion methods, wavelet obtained the best results for fusion. Considering spectral and spatial information preservation, CR of the wavelet method is 0.97 and 0.96, respectively. The supervised feature-based fusion method is a fusion of best output of pixel-based fusion level, land surface temperature (LST) data, and Sentinel-1 radar image using a supervised approach. The supervised approach is a supervised feature selection and learning of the inputs based on linear discriminant analysis and sparse regularization (LDASR) algorithm. In the present study, the non-negative matrix factorization (NMF) was utilized for feature extraction. A comparison of the obtained results with state of the art fusion method indicated a higher accuracy of our proposed method of classification. The rotation forest (RoF) classification results improvement was 25% and the support vector machine (SVM) results improvement was 31%. The results showed that the proposed method is well classified and separated four main classes of settlements, barren land, river, river bank, and even the bridges over the river. Also, a number of unclassified pixels by SVM are very low compared to other classification methods and can be neglected. The study results showed that LST calculated using thermal data has had positive effects on improving the classification results. By comparing the results of supervised cross-fusion without using LST data to the proposed method results, SVM and RoF classifiers showed 38% and 7% of classification improvement, respectively.
机译:这项研究提出了一种新的融合方法,即有监督的交叉融合方法,以提高融合的热图像,雷达图像和光学图像的分类能力。提出的交叉融合方法是热,雷达和光学数据的基于像素和基于监督特征的融合的结合。将基于像素的融合应用于Sentinel-2和Landsat 8的光学数据融合。根据相关系数(CR)和信噪比(SNR),在使用的基于像素的融合方法中,小波获得了最佳效果。融合。考虑到频谱和空间信息的保留,小波方法的CR分别为0.97和0.96。基于监督的基于特征的融合方法是使用监督的方法对基于像素的融合水平,地表温度(LST)数据和Sentinel-1雷达图像的最佳输出进行融合。监督方法是基于线性判别分析和稀疏正则化(LDASR)算法的监督特征选择和输入的学习。在本研究中,非负矩阵分解(NMF)用于特征提取。将获得的结果与最新的融合方法进行比较,表明我们提出的分类方法具有更高的准确性。旋转林(RoF)分类结果改进为25%,支持向量机(SVM)结果改进为31%。结果表明,所提出的方法分类合理,将居住区分为四个主要类别:贫瘠的土地,河流,河岸,甚至是河上的桥梁。此外,与其他分类方法相比,SVM的未分类像素数量非常少,可以忽略不计。研究结果表明,利用热数据计算得出的LST对改善分类结果具有积极作用。通过将不使用LST数据的监督交叉融合结果与建议的方法结果进行比较,SVM和RoF分类器分别显示了38%和7%的分类改进。

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