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Pixel-Based Land Cover Classification by Fusing Hyperspectral and LiDAR Data

机译:通过融合高光谱和LiDAR数据进行基于像素的土地覆盖分类

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摘要

Land cover classification has many applications like forest management, urban planning, land use change identification and environment change analysis. The passive sensing of hyperspectral systems can be effective in describing the phenomenology of the observed area over hundreds of (narrow) spectral bands. On the other hand, the active sensing of LiDAR (Light Detection and Ranging) systems can be exploited for characterising topographical information of the area. As a result, the joint use of hyperspectral and LiDAR data provides a source of complementary information, which can greatly assist in the classification of complex classes. In this study, we fuse hyperspectral and LiDAR data for land cover classification. We do a pixel-wise classification on a disjoint set of training and testing samples for five different classes. We propose a new feature combination by fusing features from both hyperspectral and LiDAR, which achieves competent classification accuracy with low feature dimension, while the existing method requires high dimensional feature vector to achieve similar classification result. Also, for the reduction of the dimension of the feature vector, Principal Component Analysis (PCA) is used as it captures the variance of the samples with a limited number of Principal Components (PCs). We tested our classification method using PCA applied on hyperspectral bands only and combined hyperspectral and LiDAR features. Classification with support vector machine (SVM) and decision tree shows that our feature combination achieves better classification accuracy compared to the existing feature combination, while keeping the similar number of PCs. The experimental results also show that decision tree performs better than SVM and requires less execution time.
机译:土地覆被分类具有许多应用,例如森林管理,城市规划,土地利用变化识别和环境变化分析。高光谱系统的被动传感可以有效地描述数百个(窄)光谱带上观测区域的现象。另一方面,可以利用LiDAR(光检测和测距)系统的主动感测来表征区域的地形信息。结果,高光谱和LiDAR数据的联合使用提供了补充信息的来源,可以极大地帮助复杂类别的分类。在这项研究中,我们将高光谱和LiDAR数据融合在一起进行土地覆盖分类。我们对五个不同类别的不相交的一组训练和测试样本进行了像素分类。我们提出了一种融合高光谱特征和LiDAR特征的新特征组合,该特征组合能够以较低的特​​征维数实现准确的分类精度,而现有方法则需要高维特征向量来实现相似的分类结果。此外,为了减少特征向量的维数,使用了主成分分析(PCA),因为它可以捕获数量有限的主成分(PC)的样本方差。我们使用仅应用于高光谱波段以及结合了高光谱和LiDAR功能的PCA测试了我们的分类方法。使用支持向量机(SVM)和决策树进行分类表明,与现有特征组合相比,我们的特征组合可实现更好的分类精度,同时保持PC数量相近。实验结果还表明,决策树的性能优于SVM,并且所需的执行时间更少。

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