Spectral Lidar Analysis and Terrain Classification in a Semi-Urban Environment

Abstract

Remote-sensing analysis is conducted for the Naval Postgraduate School campus, containing buildings, impervious surfaces (asphalt and concrete), natural ground, and vegetation. Data is from the Optech Titan, providing three-wavelength laser data (532, 1064, and 1550 nm) at 1015 points/m<sup2>. Analysis techniques for laser-scanner (LiDAR) data traditionally use only x, y, z coordinate information. The traditional approach is used to initialize the classification process into broad-spatial classes (unclassified, ground, vegetation, and buildings).Spectral analysis contributes a unique approach to the classification process. Tools and techniques designed for multispectral imagery are adapted to the LiDAR analysis herein. ENVIs N-Dimensional Visualizer is employed to develop training sets for supervised classification techniques, primarily Maximum Likelihood. Unsupervised classification for the combined spatial/spectral data is accomplished using a K-means classifier for comparison. The campus is classified into 10 and 16 classes, compared to the four from traditional methods. Addition of the spectral component improves the discrimination among impervious surfaces, other ground elements, and building materials. Maximum Likelihood demonstrates 75 percent overall classification accuracy, with grass (99.9 percent), turf (95 percent), asphalt shingles (94 percent), light-building concrete (89 percent), sand (88 percent), shrubs (85 percent), asphalt (84 percent), trees (80 percent), and clay-tile shingles (77 percent). Post-process filtering by number of returns increases overall accuracy to 82 percent.

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Document Details

Document Type
Technical Report
Publication Date
Mar 01, 2017
Accession Number
AD1045934

Entities

People

  • Charles A. Mciver

Organizations

  • Naval Postgraduate School

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  • Space

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  • Supervised Machine Learning
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  • Directed Energy