利用高光谱成像和激光雷达进行树种分类

Ø. Rudjord, Ø. Trier
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引用次数: 4

摘要

本文提出了一种区分挪威森林中主要树种云杉、松树和桦树的新方法。为此,使用了同时获取的机载激光扫描(ALS)和高光谱数据。利用激光扫描数据对高光谱数据中低植被或无植被的像元进行掩模。从物种特异性光谱中,确定了3个物种区分波长:544 nm(绿边)、674 nm(红边)和710 nm(红边)。基于决策树的像素分类方法分类正确率达到83-86%。我们计划重新访问现场,将错误分类的树木包括在扩展的原位数据集中,然后重新校准和重新运行分类器。通过使用单个树冠圈定也有改进的潜力。此外,植被高度可用于改进分类。
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Tree species classification with hyperspectral imaging and lidar
This paper presents a new method to discriminate between spruce, pine and birch, which are the dominating tree species in Norwegian forests. For this purpose, simultaneously acquired airborne laser scanning (ALS) and hyperspectral data are used. The laser scanning data was used to mask pixels with low or no vegetation in the hyperspectral data. From the species-specific spectra, three wavelengths were identified for species discrimination: 544 nm (green), 674 nm (red) and 710 nm (red edge). A decision tree-based pixel classification method obtained 83–86% correct classification. We plan a field revisit to include misclassified trees in an extended in situ data set, and then to re-calibrate and re-run the classifier. There is also potential for improvement by using individual tree crown delineation. Further, the vegetation height could potentially be used to improve classification.
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