Demonstration of a virtual active hyperspectral LiDAR in automated point cloud classification |
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Authors: | Juha Suomalainen,Teemu HakalaHarri Kaartinen,Esa Rä ikkö nen,Sanna Kaasalainen |
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Affiliation: | a Finnish Geodetic Institute, P.O. Box 15, 02431 Masala, Finland b Klastech GmbH, Konrad-Adenauer-Allee 11, D-44263 Dortmund, Germany |
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Abstract: | ![]() In this paper, a measurement system for the acquisition of a virtual hyperspectral LiDAR dataset is presented. As commercial hyperspectral LiDARs are not yet available, the system provides a novel type of data for the testing and developing of future hyperspectral LiDAR algorithms. The measurement system consists of two parts: first, backscattered reflectance spectra are collected using a spectrometer and a cutting-edge technology, white-light supercontinuum laser source; second, a commercial monochromatic LiDAR system is used for ranging. A virtual hyperspectral LiDAR dataset is produced by data fusion. Such a dataset was collected on a Norway spruce (Picea abies) sample. The performance of classification was tested using an experimental hyperspectral algorithm based on a novel combination of the Spectral Correlation Mapper and a region growing algorithm. The classifier was able to automatically distinguish between needles, branches and background, in other words, perform a difficult task using only traditional TLS data. |
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Keywords: | Hyperspectral Supercontinuum LiDAR Point cloud classification Spectral Correlation Mapper |
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