Abstract

Urban trees and forests provide multiple ecosystem services (ES), including temperature regulation, carbon sequestration, and biodiversity. Interest in ES has increased amongst policymakers, scientists, and citizens given the extent and growth of urbanized areas globally. However, the methods and techniques used to properly assess biodiversity and ES provided by vegetation in urban environments, at large scales, are insufficient. Individual tree identification and characterization are some of the most critical issues used to evaluate urban biodiversity and ES, given the complex spatial distribution of vegetation in urban areas and the scarcity or complete lack of systematized urban tree inventories at large scales, e.g., at the regional or national levels. This often limits our knowledge on their contributions toward shaping biodiversity and ES in urban areas worldwide. This paper provides an analysis of the state-of-the-art studies and was carried out based on a systematic review of 48 scientific papers published during the last five years (2016–2020), related to urban tree and greenery characterization, remote sensing techniques for tree identification, processing methods, and data analysis to classify and segment trees. In particular, we focused on urban tree and forest characterization using remotely sensed data and identified frontiers in scientific knowledge that may be expanded with new developments in the near future. We found advantages and limitations associated with both data sources and processing methods, from which we drew recommendations for further development of tree inventory and characterization in urban forestry science. Finally, a critical discussion on the current state of the methods, as well as on the challenges and directions for future research, is presented.

Highlights

  • Of them were developed at a local scale, such as Regarding the scale, 72% of them were developed at a local scale, such specific neighborhoods

  • This study revealed that including laser scanning detection and ranging (LiDAR) and hyperspectral data within the model significantly increased Overall Accuracy (OA) to 75% in the individual species recognition, with an accuracy ranging from 37% (Metrosideros excelsa), to 96%

  • We found a total of 19 scientific papers that used ground-level images (GLI) (2 photogrammetric point clouds (PPCs), 16 digital ground-level imagery (DGI), and 1 video) to perform urban greenery and tree characterization (Table 5)

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Summary

Introduction

Trees are some of the most important elements in urban areas due to the ecosystem services (ES) they provide, and they often play a critical role in urban environmental management [1,2]. Urban forests, such as greenery inside urban areas [3,4,5,6,7] (i.e., individual street trees, parks, connector areas, and wetlands), are the main sources of ES for more than 50% of people in the world who live in cities [8,9,10,11]. The ES provided by trees in urban ecosystems have a direct positive impact on human health and security through

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