Abstract

Full-waveform laser scanning data acquired with a Riegl LMS-Q560 instrument were used to classify an orange orchard into orange trees, grass and ground using waveform parameters alone. Gaussian decomposition was performed on this data capture from the National Airborne Field Experiment in November 2006 using a custom peak-detection procedure and a trust-region-reflective algorithm for fitting Gauss functions. Calibration was carried out using waveforms returned from a road surface, and the backscattering coefficient γ was derived for every waveform peak. The processed data were then analysed according to the number of returns detected within each waveform and classified into three classes based on pulse width and γ. For single-peak waveforms the scatterplot of γ versus pulse width was used to distinguish between ground, grass and orange trees. In the case of multiple returns, the relationship between first (or first plus middle) and last return γ values was used to separate ground from other targets. Refinement of this classification, and further sub-classification into grass and orange trees was performed using the γ versus pulse width scatterplots of last returns. In all cases the separation was carried out using a decision tree with empirical relationships between the waveform parameters. Ground points were successfully separated from orange tree points. The most difficult class to separate and verify was grass, but those points in general corresponded well with the grass areas identified in the aerial photography. The overall accuracy reached 91%, using photography and relative elevation as ground truth. The overall accuracy for two classes, orange tree and combined class of grass and ground, yielded 95%. Finally, the backscattering coefficient γ of single-peak waveforms was also used to derive reflectance values of the three classes. The reflectance of the orange tree class (0.31) and ground class (0.60) are consistent with published values at the wavelength of the Riegl scanner (1550nm). The grass class reflectance (0.46) falls in between the other two classes as might be expected, as this class has a mixture of the contributions of both vegetation and ground reflectance properties.

Highlights

  • Full-waveform laser scanning data acquired with a Riegl LMS-Q560 instrument were used to classify an orange orchard into orange trees, grass and ground using waveform parameters alone

  • Calibration was carried out using waveforms returned from a road surface, and the backscattering coefficient c was derived for every waveform peak

  • Even if classification is performed in an urban environment, it is usually limited to binary detection of urban vegetation due to complex nature of those sites (Ducic et al, 2006; Gross et al, 2007; Höfle and Hollaus, 2010; Höfle et al, 2012; Rutzinger et al, 2008; Wagner et al, 2008)

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Summary

Introduction

In comparison to so-called discrete systems, full-waveform scanners offer additional information about the targets included in the footprint than location alone (Mallet and Bretar, 2009). This extra information is derived from (i) peak amplitude which relates to radiometric properties of the target and (ii) pulse width, which is a measure of surface roughness and slope. A number of studies distinguish more than vegetation and non-vegetation classes in an urban environment including Mallet et al (2008, 2011), Alexander et al (2010), Guo et al (2011). Alexander et al (2010) separated six classes: trees, shrubs, grass, road, flat and pitched roofs with 92% overall accuracy

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