Mapping canopy cover for municipal forestry monitoring: Using free Landsat imagery and machine learning

被引:0
|
作者
Bonney, Mitchell T. [1 ,3 ]
He, Yuhong [1 ]
Vogeler, Jody [2 ]
Conway, Tenley [1 ]
Kaye, Esther [1 ]
机构
[1] Univ Toronto Mississauga, Dept Geog Geomat & Environm, Mississauga, ON L5L 1C6, Canada
[2] Colorado State Univ, Nat Resource Ecol Lab, Ft Collins, CO 80523 USA
[3] Nat Resources Canada, Canada Ctr Remote Sensing, Ottawa, ON K1A 0E4, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Canopy cover; Landsat; Random forest; Urban forest; Municipal; TREE-CANOPY; TIME-SERIES; URBAN; HEIGHT; AREA;
D O I
10.1016/j.ufug.2024.128490
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Trees across the urban-rural continuum are recognized for their ecological importance and ecosystem services. Municipalities often utilize spatial canopy cover data for monitoring this resource. Monitoring frameworks typically rely on fine-scale maps derived from very high spatial resolution sensors, which are high quality but expensive and unwieldy for consistent wide-area monitoring. In this paper, we explore how free Landsat imagery, supported by very high-resolution imagery interpretation and/or digital hemispherical photographs, can be used to effectively map canopy cover at a scale appropriate for municipal monitoring. We compare linear models and random forest machine learning for predicting canopy cover across a landscape (general) and within specific land covers (specialized). We create 2018 canopy cover maps and track progress towards forestry objectives in a region of southern Ontario, Canada. Random forest models using all reference data perform best for general use (R-2: 0.90, RMSE: 10.1 %), separating non-canopy vegetation (e.g., agricultural fields) from tree canopy. Specialized models are useful in forest land cover patches, where hemispherical photographs relate with Landsat at a moderate strength (R-2: 0.67, RMSE: 2.73 %), and in residential areas, capturing the totality of canopy cover variation (R-2: 0.85, RMSE: 5.66 %). Accuracy was assessed with standard cross-validation, which is useful given limited resources. However, following best practice, an independent reference sample was also leveraged to assess the best general model (R-2: 0.86, RMSE: 11.4 %), indicating that cross-validation was slightly overoptimistic. Results show that Caledon, a rural-dominant municipality within the study area, is the greenest (34 % canopy cover). The two cities (Brampton and Mississauga) have 15.9 % and 17.5 % canopy cover. Residential canopy criteria indicate "Good" performance in Caledon, "Moderate" in Mississauga, and "Low" in Brampton based on our 2018 assessment. The methods described here can provide municipalities with a low-cost approach for tree canopy monitoring across complex landscapes.
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页数:18
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