Abstract

The objective of the current study was to analyze the seasonal effect on differentiating tree species in an urban environment using multi-temporal hyperspectral data, Light Detection And Ranging (LiDAR) data, and a tree species database collected from the field. Two Airborne Imaging Spectrometer for Applications (AISA) hyperspectral images were collected, covering the Summer and Fall seasons. In order to make both datasets spatially and spectrally compatible, several preprocessing steps, including band reduction and a spatial degradation, were performed. An object-oriented classification was performed on both images using training data collected randomly from the tree species database. The seven dominant tree species (Gleditsia triacanthos, Acer saccharum, Tilia Americana, Quercus palustris, Pinus strobus and Picea glauca) were used in the classification. The results from this analysis did not show any major difference in overall accuracy between the two seasons. Overall accuracy was approximately 57% for the Summer dataset and 56% for the Fall dataset. However, the Fall dataset provided more consistent results for all tree species while the Summer dataset had a few higher individual class accuracies. Further, adding LiDAR into the classification improved the results by 19% for both fall and summer. This is mainly due to the removal of shadow effect and the addition of elevation data to separate low and high vegetation.

Highlights

  • Tree species maps are important for several reasons

  • The goal of this research was to determine the affect of season on tree species classification in an urban environment using hyperspectral imagery and object-based classification

  • Before any image processing was done, both hyperspectral datasets were geometrically referenced to the Light Detection And Ranging (LiDAR) imagery using ENVI 4.4 (ITT)

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Summary

Introduction

Tree species maps are important for several reasons. Municipal governments use land cover maps for conservation, such as the preservation of a particular tree species [1]. Growing cities have a desire to control development near greenbelt areas [2]. Tree species maps can be used by conservationists hoping to protect the favored nesting place of a particular species of bird [3]. There is demand for accurate and up-to-date land cover maps. Remote sensing approaches have proven to be valuable in developing land cover maps compared to traditional methods [5, 4]

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