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A DIMENSION REDUCTION-BASED METHOD FOR CLASSIFICATION OF HYPERSPECTRAL AND LIDAR DATA

机译:基于尺寸的超曲线和LIDAR数据分类方法

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The existence of various natural objects such as grass, trees, and rivers along with artificial manmade features such as buildings and roads, make it difficult to classify ground objects. Consequently using single data or simple classification approach cannot improve classification results in object identification. Also, using of a variety of data from different sensors; increase the accuracy of spatial and spectral information. In this paper, we proposed a classification algorithm on joint use of hyperspectral and Lidar (Light Detection and Ranging) data based on dimension reduction. First, some feature extraction techniques are applied to achieve more information from Lidar and hyperspectral data. Also Principal component analysis (PCA) and Minimum Noise Fraction (MNF) have been utilized to reduce the dimension of spectral features. The number of 30 features containing the most information of the hyperspectral images is considered for both PCA and MNF. In addition, Normalized Difference Vegetation Index (NDVI) has been measured to highlight the vegetation. Furthermore, the extracted features from Lidar data calculated based on relation between every pixel of data and surrounding pixels in local neighbourhood windows. The extracted features are based on the Grey Level Co-occurrence Matrix (GLCM) matrix. In second step, classification is operated in all features which obtained by MNF, PCA, NDVI and GLCM and trained by class samples. After this step, two classification maps are obtained by SVM classifier with MNF+NDVI+GLCM features and PCA+NDVI+GLCM features, respectively. Finally, the classified images are fused together to create final classification map by decision fusion based majority voting strategy.
机译:存在各种天然物体,如草,树木和河流以及建筑物和道路等人造的人工特征,使得难以分类地面物体。因此,使用单个数据或简单的分类方法无法改善对象标识的分类。此外,使用来自不同传感器的各种数据;提高空间和光谱信息的准确性。在本文中,我们提出了一种基于尺寸减少的高光谱和激光雷达(光检测和测距)数据的分类算法。首先,应用一些特征提取技术来实现LIDAR和超光谱数据的更多信息。还利用了主成分分析(PCA)和最小噪声分数(MNF)来减少光谱特征的尺寸。包含高光谱图像的最多信息的30个特征的数量被认为是PCA和MNF。此外,已经测量了归一化差异植被指数(NDVI)以突出植被。此外,基于每个数据像素与本地邻窗口中的每个像素与周围像素之间的关系计算的LIDAR数据的提取特征。提取的特征基于灰度级共出矩阵(GLCM)矩阵。在第二步中,分类在由MNF,PCA,NDVI和GLCM获得的所有特征中运行,并被类样本训练。在此步骤之后,SVM分类器分别具有MNF + NDVI + GLCM特征和PCA + NDVI + GLCM特征的两个分类映射。最后,分类的图像融合在一起以通过基于决策融合的多数投票策略来创建最终分类图。

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