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Dive into the research topics where Ian Paynter is active.

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Featured researches published by Ian Paynter.


Sensors | 2016

Radiometric Calibration of a Dual-Wavelength, Full-Waveform Terrestrial Lidar

Zhan Li; David L. B. Jupp; Alan H. Strahler; Crystal B. Schaaf; Glenn A. Howe; Kuravi Hewawasam; Ewan S. Douglas; Supriya Chakrabarti; Timothy A. Cook; Ian Paynter; Edward Saenz; Michael Schaefer

Radiometric calibration of the Dual-Wavelength Echidna® Lidar (DWEL), a full-waveform terrestrial laser scanner with two simultaneously-pulsing infrared lasers at 1064 nm and 1548 nm, provides accurate dual-wavelength apparent reflectance (ρapp), a physically-defined value that is related to the radiative and structural characteristics of scanned targets and independent of range and instrument optics and electronics. The errors of ρapp are 8.1% for 1064 nm and 6.4% for 1548 nm. A sensitivity analysis shows that ρapp error is dominated by range errors at near ranges, but by lidar intensity errors at far ranges. Our semi-empirical model for radiometric calibration combines a generalized logistic function to explicitly model telescopic effects due to defocusing of return signals at near range with a negative exponential function to model the fall-off of return intensity with range. Accurate values of ρapp from the radiometric calibration improve the quantification of vegetation structure, facilitate the comparison and coupling of lidar datasets from different instruments, campaigns or wavelengths and advance the utilization of bi- and multi-spectral information added to 3D scans by novel spectral lidars.


Remote Sensing | 2017

Examination of the Potential of Terrestrial Laser Scanning and Structure-from-Motion Photogrammetry for Rapid Nondestructive Field Measurement of Grass Biomass

Sam D. Cooper; David P. Roy; Crystal B. Schaaf; Ian Paynter

Above ground biomass (AGB) is a parameter commonly used for assessment of grassland systems. Destructive AGB measurements, although accurate, are time consuming and are not easily undertaken on a repeat basis or over large areas. Structure-from-Motion (SfM) photogrammetry and Terrestrial Laser Scanning (TLS) are two technologies that have the potential to yield precise 3D structural measurements of vegetation quite rapidly. Recent advances have led to the successful application of TLS and SfM in woody biomass estimation, but application in natural grassland systems remains largely untested. The potential of these techniques for AGB estimation is examined considering 11 grass plots with a range of biomass in South Dakota, USA. Volume metrics extracted from the TLS and SfM 3D point clouds, and also conventional disc pasture meter settling heights, were compared to destructively harvested AGB total (grass and litter) and AGB grass plot measurements. Although the disc pasture meter was the most rapid method, it was less effective in AGB estimation (AGBgrass r2 = 0.42, AGBtotal r2 = 0.32) than the TLS (AGBgrass r2 = 0.46, AGBtotal r2 = 0.57) or SfM (AGBgrass r2 = 0.54, AGBtotal r2 = 0.72) which both demonstrated their utility for rapid AGB estimation of grass systems.


international geoscience and remote sensing symposium | 2013

Separating leaves from trunks and branches with dual-wavelength terrestrial lidar scanning

Zhan Li; Ewan S. Douglas; Alan H. Strahler; Crystal B. Schaaf; Xiaoyuan Yang; Zhuosen Wang; Tian Yao; Feng Zhao; Edward Saenz; Ian Paynter; Curtis E. Woodcock; Supriya Chakrabarti; Timothy A. Cook; Jason Martel; Glenn A. Howe; David L. B. Jupp; Darius S. Culvenor; Glenn Newnham; Jenny L. Lovell

Terrestrial laser scanning combining both near-infrared (NIR) and shortwave-infrared (SWIR) wavelengths can readily distinguish broad leaves from trunks, branches, and ground surfaces. Merging data from the 1548 nm SWIR laser in the Dual-Wavelength Echidna® Lidar (DWEL) instrument in engineering trials with data from the 1064 nm NIR laser in the Echidna® Validation Instrument (EVI), we imaged a deciduous forest scene at the Harvard Forest, Petersham, Massachusetts, and showed that trunks are about twice as bright as leaves at 1548 nm, while they have about equal brightness at 1064 nm. The reduced return of leaves in the SWIR is also evident in merged point clouds constructed from the two laser scans. This distinctive difference between leaf and trunk reflectance in the two wavelengths validates the principle of effective discrimination of leaves from other targets using the new dual-wavelength instrument.


Methods in Ecology and Evolution | 2017

Classifying ecosystems with metaproperties from terrestrial laser scanner data

Ian Paynter; Daniel Genest; Edward Saenz; Francesco Peri; Peter Boucher; Zhan Li; Alan H. Strahler; Crystal B. Schaaf

Abstract In this study, we introduce metaproperty analysis of terrestrial laser scanner (TLS) data, and demonstrate its application through several ecological classification problems. Metaproperty analysis considers pulse level and spatial metrics derived from the hundreds of thousands to millions of lidar pulses present in a single scan from a typical contemporary instrument. In such large aggregations, properties of the populations of lidar data reflect attributes of the underlying ecological conditions of the ecosystems. In this study, we provide the Metaproperty Classification Model to employ TLS metaproperty analysis for classification problems in ecology. We applied this to a proof‐of‐concept study, which classified 88 scans from rooms and forests with 100% accuracy, to serve as a template. We then applied the Metaproperty Classification Model in earnest, to separate scans from temperate and tropical forests with 97.09% accuracy (N = 224), and to classify scans from inland and coastal tropical rainforests with 84.07% accuracy (N = 270). The results demonstrate the potential for metaproperty analysis to identify subtle and important ecosystem conditions, including diseases and anthropogenic disturbances. Metaproperty analysis serves as an augmentation to contemporary object reconstruction applications of TLS in ecology, and can characterize regional heterogeneity.


international geoscience and remote sensing symposium | 2013

Studying canopy structure through 3-D reconstruction of point clouds from full-waveform terrestrial lidar

Xiaoyuan Yang; Crystal B. Schaaf; Alan H. Strahler; Zhan Li; Zhuosen Wang; Tian Yao; Feng Zhao; Edward Saenz; Ian Paynter; Ewan S. Douglas; Supriya Chakrabarti; Timothy A. Cook; Jason Martel; Glenn A. Howe; Curtis E. Woodcock; David L. B. Jupp; Darius S. Culvenor; Glenn Newnham; Jenny L. Lovell

This study presents a three-dimensional (3-D) forest reconstruction methodology using the new and emerging science of terrestrial full-waveform lidar scanning, which can provide rapid and efficient measurements of canopy structure. A 3-D forest reconstruction provides a new pathway to estimate forest structural parameters such as tree diameter at breast height, tree height, crown diameter, and stem count density (trees per hectare). It enables the study of the detailed structure study with respect to the canopy (foliage or branch/trunk), as well as the generation of a digital elevation model (DEM) and a canopy height model (CHM) at the stand level. Leaf area index (LAI) and Foliage area volume density profile directly estimated from voxelized 3-D reconstruction agree with measurements from field and airborne instrument. A 3-D forest reconstruction allows virtual direct representation of forest structure, and provides consistent and reliable validation data sources for airborne or spaceborne data.


Interface Focus | 2018

Bounding uncertainty in volumetric geometric models for terrestrial lidar observations of ecosystems

Ian Paynter; Daniel Genest; Francesco Peri; Crystal B. Schaaf

Volumetric models with known biases are shown to provide bounds for the uncertainty in estimations of volume for ecologically interesting objects, observed with a terrestrial laser scanner (TLS) instrument. Bounding cuboids, three-dimensional convex hull polygons, voxels, the Outer Hull Model and Square Based Columns (SBCs) are considered for their ability to estimate the volume of temperate and tropical trees, as well as geomorphological features such as bluffs and saltmarsh creeks. For temperate trees, supplementary geometric models are evaluated for their ability to bound the uncertainty in cylinder-based reconstructions, finding that coarser volumetric methods do not currently constrain volume meaningfully, but may be helpful with further refinement, or in hybridized models. Three-dimensional convex hull polygons consistently overestimate object volume, and SBCs consistently underestimate volume. Voxel estimations vary in their bias, due to the point density of the TLS data, and occlusion, particularly in trees. The response of the models to parametrization is analysed, observing unexpected trends in the SBC estimates for the drumlin dataset. Establishing that this result is due to the resolution of the TLS observations being insufficient to support the resolution of the geometric model, it is suggested that geometric models with predictable outcomes can also highlight data quality issues when they produce illogical results.


Remote Sensing in Ecology and Conservation | 2016

Observing ecosystems with lightweight, rapid‐scanning terrestrial lidar scanners

Ian Paynter; Edward Saenz; Daniel Genest; Francesco Peri; Angela Erb; Zhan Li; Kara Wiggin; Jasmine Muir; Pasi Raumonen; Erica Skye Schaaf; Alan H. Strahler; Crystal B. Schaaf


Archive | 2018

Supplementary material from "Bounding uncertainty in volumetric geometric models for terrestrial lidar observations of ecosystems"

Ian Paynter; Daniel Genest; Francesco Peri; Crystal Schaaf


2015 AGU Fall Meeting | 2015

Mitigating Uncertainty from Vegetation Spatial Complexity with Highly Portable Lidar

Ian Paynter


ForestSAT2014 Open Conference System | 2014

Comparison of terrestrial laser scanners for forest canopy characterisation

Mark Danson; Lucy Walker; John Armston; Zhan Li; Glenn Newnham; Ian Paynter; Crystal B. Schaaf; Alan H. Strahler; Zhenyu Zhang

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Crystal B. Schaaf

University of Massachusetts Boston

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Edward Saenz

University of Massachusetts Boston

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Francesco Peri

University of Massachusetts Boston

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Daniel Genest

University of Massachusetts Boston

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Glenn A. Howe

University of Massachusetts Lowell

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Supriya Chakrabarti

University of Massachusetts Lowell

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Timothy A. Cook

University of Massachusetts Lowell

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