Abstract

Increasing recognition of the importance of urban forest ecosystem services calls for the sustainable management of urban forests, which requires timely and accurate information on the status, trends and interactions between socioeconomic and ecological processes pertaining to urban forests. In this regard, remote sensing, especially with its recent advances in sensors and data processing methods, has emerged as a premier and useful observational and analytical tool. This study summarises recent remote sensing applications in urban forestry from the perspective of three distinctive themes: multi-source, multi-temporal and multi-scale inputs. It reviews how different sources of remotely sensed data offer a fast, replicable and scalable way to quantify urban forest dynamics at varying spatiotemporal scales on a case-by-case basis. Combined optical imagery and LiDAR data results as the most promising among multi-source inputs; in addition, future efforts should focus on enhancing data processing efficiency. For long-term multi-temporal inputs, in the event satellite imagery is the only available data source, future work should improve haze-/cloud-removal techniques for enhancing image quality. Current attention given to multi-scale inputs remains limited; hence, future studies should be more aware of scale effects and cautiously draw conclusions.

Highlights

  • The world is experiencing accelerated urbanisation and growth of cities [1,2], which have dramatically changed the urban landscape [3,4,5]

  • We aim to summarise recent applications of remote sensing in urban forestry from the perspective of three distinctive themes, i.e., multi-source, multi-temporal, and multi-scale inputs

  • To summarise recent applications of remote sensing in the field of urban forestry, we focused our search on research articles published in peer-reviewed journals, in English, within the time span between January 2013 and March 2019

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Summary

Introduction

The world is experiencing accelerated urbanisation and growth of cities [1,2], which have dramatically changed the urban landscape [3,4,5]. The successful management of urban forests for the steady and sustainable provision of a full spectrum of ecosystem services requires timely and accurate information on the status, trends, and information about interactions between socioeconomic and ecological processes pertaining to urban forests occurring at multiple temporal and spatial scales [2,35,38,39] Such information has been obtained by random field sampling and visual interpretation of aerial photos, which are expensive, generally labour-intensive and time-consuming, and usually cannot provide complete coverage of relatively large areas of interest [40,41,42]. We discuss the potential of remote sensing to improve the reliability and accuracy of mapping urban forest structural, functional and configurational properties and dynamics, as well as of estimating a suite of ecosystem services

Remote Sensing Applications in Urban Forests
Theme 1
Multiple Sources of Satellite Imagery
Satellite Imagery and Airborne LiDAR
Satellite Imagery and Aerial Imagery
Airborne LiDAR and Aerial Imagery
Theme 2
Short Series Data Input
Long Series Data Input
Theme 3
Local- and City-Scales
City- and Regional Scales
Challenges and Future Directions
Concluding Remarks
Findings
Limitations
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