File:FORESTRY IDENTIFICATION WITH LIDAR WAVEFORM AND POINT CLOUDS (IA forestryidentifi1094559646).pdf
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[edit]FORESTRY IDENTIFICATION WITH LIDAR WAVEFORM AND POINT CLOUDS ( ) | ||
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Author |
Davis, Andrew S. |
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Title |
FORESTRY IDENTIFICATION WITH LIDAR WAVEFORM AND POINT CLOUDS |
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Publisher |
Monterey, CA; Naval Postgraduate School |
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Description |
The aim of this study was to analyze discrete and waveform data to improve existing Terrain Classification (TERCAT) capabilities. Light Detection and Ranging (LiDAR) data were collected over the Point Lobos State Park, which contains various buildings, vegetation, and man-made surfaces. Data were used from two separate airborne LiDAR systems, Optech Titan and Airborne Hydrography AB (AHAB) Chiroptera II. Classic standard point cloud analysis techniques were used with the discrete data. Waveform data were analyzed following a gridding or rasterization process to enable visualization and processing. Analysis approaches used were ENVI classification tools such as Support Vector Machines (SVM), Spectral Angle Mapper (SAM), Maximum Likelihood, and K-means to classify returns. Through the use of this analog to hyperspectral data analysis to classify vegetation and terrain, the results are that, by using the Support Vector Machines with full waveform data, we can successfully improve low vegetation classifiers by 40%, and differentiate tree types (Pine/Cypress) at 40–60% accuracy. Subjects: LiDAR; full waveform LiDAR; remote sensing; terrain classification; laser altimetry; Support Vector Machines |
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Language | English | |
Publication date | June 2018 | |
Current location |
IA Collections: navalpostgraduateschoollibrary; fedlink |
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Accession number |
forestryidentifi1094559646 |
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Source | ||
Permission (Reusing this file) |
This publication is a work of the U.S. Government as defined in Title 17, United States Code, Section 101. Copyright protection is not available for this work in the United States. |
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current | 17:20, 20 July 2020 | 1,275 × 1,650, 82 pages (4.03 MB) | Fæ (talk | contribs) | FEDLINK - United States Federal Collection forestryidentifi1094559646 (User talk:Fæ/IA books#Fork8) (batch 1993-2020 #16922) |
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Short title | FORESTRY IDENTIFICATION WITH LIDAR WAVEFORM AND POINT CLOUDS |
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Author | Davis, Andrew S. |
Keywords |
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Software used | Davis, Andrew S. |
Conversion program | Microsoft® Word 2016 |
Encrypted | no |
Page size | 612 x 792 pts (letter) |
Version of PDF format | 1.4 |