An Object-Oriented Classification of Muir Woods using the Synergy of LiDAR and Multispectral Data

Thesis
Year
2013

Abstract

An Object Based Image Analysis (OBIA) was employed to classify four tree species in a temperate rainforest utilizing the high-resolution WorldView-2 (WV2) sensor (8 bands + panchromatic) and airborne LiDAR (minimally 2 points per square meter). Classification involved first performing a parametric Maximum Likelihood (ML), Spectral Angle Mapper (SAM), and OBIA classification to the study area. Secondly, for each classified image, a LiDAR-derived Canopy Height Model (CHM) was incorporated thereafter. Kappa and z statistics were calculated and compared for each classification. It was originally hypothesized that an OBIA will provide the best accuracy, and incorporation of a CHM would further increase classification accuracy for all outputs. A series of statistical tests indicated a lack of strength in utilizing the CHM, except when specifying the Coastal Redwood class at 50m. Kappa results are 59% for the OBIA, 46% for ML, and 24% for SAM. CHM increased kappa accuracy by an average of 4.5%.

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