联合使用激光雷达和高光谱数据的高级分类器:在澳大利亚昆士兰的案例研究

Pedram Ghamisi, Dan Wu, Gabriele Cavallaro, J. Benediktsson, S. Phinn, N. Falco
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引用次数: 2

摘要

关于近年来可用遥感器数量的指数增长,在同一场景上捕获不同类型数据的可能性,导致了许多与联合使用被动和主动传感器以准确分类不同材料有关的研究工作。然而,到目前为止,关于激光雷达与高光谱数据联合使用所获得的高价值信息的集成研究工作较少。本文提出了一种基于精度和CPU处理时间要求的高效分类方法,用于整合大数据集(如激光雷达和高光谱),以提供一系列空间尺度的土地覆盖制图能力。此外,本文提出的方法是全自动的,能够在几秒钟内以非常有限的训练样本数量有效地处理包含大量特征的大数据。
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An advanced classifier for the joint use of LiDAR and hyperspectral data: Case study in Queensland, Australia
With respect to the exponential increase in the number of available remote sensors in recent years, the possibility of having different types of data captured over the same scene, has resulted in many research works related to the joint use of passive and active sensors for the accurate classification of different materials. However, until now, there is a small number of research works related to the integration of highly valuable information obtained from the joint use of LiDAR and hyperspectral data. This paper proposes an efficient classification approach in terms of accuracies and demanded CPU processing time for integrating big data sets (e.g., LiDAR and hyperspectral) to provide land cover mapping capabilities at a range of spatial scales. In addition, the proposed approach is fully automatic and is able to efficiently handle big data containing a huge number of features with very limited number of training samples in few seconds.
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