Abstract

Unmanned aerial vehicle (UAV) remote sensing has great potential for vegetation mapping in complex urban landscapes due to the ultra-high resolution imagery acquired at low altitudes. Because of payload capacity restrictions, off-the-shelf digital cameras are widely used on medium and small sized UAVs. The limitation of low spectral resolution in digital cameras for vegetation mapping can be reduced by incorporating texture features and robust classifiers. Random Forest has been widely used in satellite remote sensing applications, but its usage in UAV image classification has not been well documented. The objectives of this paper were to propose a hybrid method using Random Forest and texture analysis to accurately differentiate land covers of urban vegetated areas, and analyze how classification accuracy changes with texture window size. Six least correlated second-order texture measures were calculated at nine different window sizes and added to original Red-Green-Blue (RGB) images as ancillary data. A Random Forest classifier consisting of 200 decision trees was used for classification in the spectral-textural feature space. Results indicated the following: (1) Random Forest outperformed traditional Maximum Likelihood classifier and showed similar performance to object-based image analysis in urban vegetation classification; (2) the inclusion of texture features improved classification accuracy significantly; (3) classification accuracy followed an inverted U relationship with texture window size. The results demonstrate that UAV provides an efficient and ideal platform for urban vegetation mapping. The hybrid method proposed in this paper shows good performance in differentiating urban vegetation mapping. The drawbacks of off-the-shelf digital cameras can be reduced by adopting Random Forest and texture analysis at the same time.

Highlights

  • IntroductionUrban vegetation mapping can be defined as the identification of land cover types over urban vegetated areas according to many studies [11]

  • The overall objective of this study is to develop an accurate classification method for urban vegetation mapping via utilizing Random Forest and texture analysis based on ultra-high resolution (UHR) digital Unmanned aerial vehicle (UAV) imagery (7 cm)

  • This is mainly due to the low spectral resolution of UAV images and the lack of a NIR band reduces the separability of each land cover types

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Summary

Introduction

Urban vegetation mapping can be defined as the identification of land cover types over urban vegetated areas according to many studies [11]. With the capacity for discriminating large scale of land cover types, remote sensing has been widely used for vegetation mapping in different environments [1,2,3]. Compared with wild vegetation (e.g., rangeland, forests), urban vegetation cover is much more divided and fragmented which is more difficult and challenging for accurate extraction. How to accurately map and extract land cover types over urban vegetated areas has been a hot topic in remote sensing field [1,2,3,4,5,6,7,8,9,10]

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