Abstract

Species identification in Quebec, Canada, is usually performed with photo-interpretation at the stand level, and often results in a lack of precision which affects forest management. Very high spatial resolution imagery, such as WorldView-3 and Light Detection and Ranging have the potential to overcome this issue. The main objective of this study is to map 11 tree species at the tree level using an object-based approach. For modeling, 240 variables were derived from WorldView-3 with pixel-based and arithmetic feature calculation techniques. A global approach (11 species) was compared to a hierarchical approach at two levels: (1) tree type (broadleaf/conifer) and (2) individual broadleaf (five) and conifer (six) species. Five different model techniques were compared: support vector machine, classification and regression tree, random forest (RF), k-nearest neighbors, and linear discriminant analysis. Each model was assessed using 16-band or first 8-band derived variables, with the results indicating higher precision for the RF technique. Higher accuracies were found using 16-band instead of 8-band derived variables for the global approach (overall accuracy (OA): 75% vs. 71%, Kappa index of agreement (KIA): 0.72 vs. 0.67) and tree type level (OA: 99% vs. 97%, KIA: 0.97 vs. 0.95). For broadleaf individual species, higher accuracy was found using first 8-band derived variables (OA: 70% vs. 68%, KIA: 0.63 vs. 0.60). No distinction was found for individual conifer species (OA: 94%, KIA: 0.93). This paper demonstrates that a hierarchical classification approach gives better results for conifer species and that using an 8-band WorldView-3 instead of a 16-band is sufficient.

Highlights

  • Forest characterization in Quebec, Canada, is usually assessed based on photo-interpretation using three-dimensional appearance

  • This study compares five different models to successfully map 11 tree species in a natural North American forest based on WorldView-3 imagery and LiDAR data

  • This study proposes a method to map individual tree species by using machine learning techniques with very high spatial resolution imagery (WorldView-3) in a complex natural North American forest at the tree level

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Summary

Introduction

Forest characterization in Quebec, Canada, is usually assessed based on photo-interpretation using three-dimensional appearance. This approach has been used since the last century and is still in use for forest planning and forest composition analysis [1]. Species identification with these newer methods still lacks precision, and varies among photo-interpreters, mainly because this characterization is made at the stand level, as species identification at the tree level would be time consuming and expensive [3,4]. With an airborne laser scanner or “LiDAR” (light detection and ranging), an infrared laser can scan the surface of the earth, generating a 3D point cloud that can be used to analyze the tree structure [8,9]

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