Abstract

A reliable estimation and monitoring of tree canopy cover or shade distribution is essential for a sustainable cocoa production via agroforestry systems. Remote sensing (RS) data offer great potential in retrieving and monitoring vegetation status at landscape scales. However, parallel advancements in image processing and analysis are required to appropriately use such data for different targeted applications. This study assessed the potential of Sentinel-1A (S-1A) C-band synthetic aperture radar (SAR) backscatter in estimating canopy cover variability in cocoa agroforestry landscapes. We investigated two landscapes, in Center and South Cameroon, which differ in predominant vegetation: forest-savannah transition and forest landscape, respectively. We estimated canopy cover using in-situ digital hemispherical photographs (DHPs) measures of gap fraction, verified the relationship with SAR backscatter intensity and assessed predictions based on three machine learning approaches: multivariate bootstrap regression, neural networks regression, and random forest regression. Our results showed that about 30% of the variance in canopy gap fraction in the cocoa production landscapes was shared by the used SAR backscatter parameters: a combination of S-1A backscatter intensity, backscatter coefficients, difference, cross ratios, and normalized ratios. Based on the model predictions, the VV (co-polarization) backscatter showed high importance in estimating canopy gap fraction; the VH (cross-polarized) backscatter was less sensitive to the estimated canopy gap. We observed that a combination of different backscatter variables was more reliable at predicting the canopy gap variability in the considered type of vegetation in this study—agroforests. Semi-variogram analysis of canopy gap fraction at the landscape scale revealed higher spatial clustering of canopy gap, based on spatial correlation, at a distance range of 18.95 m in the vegetation transition landscape, compared to a 51.12 m spatial correlation range in the forest landscape. We provide new insight on the spatial variability of canopy gaps in the cocoa landscapes which may be essential for predicting impacts of changing and extreme (drought) weather conditions on farm management and productivity. Our results contribute a proof-of-concept in using current and future SAR images to support management tools or strategies on tree inventorying and decisions regarding incentives for shade tree retention and planting in cocoa landscapes.

Highlights

  • The spatial variability in canopy cover over forest land is a vital information for monitoring and assessing the influence of forest management practices on ecosystem services (ESs)

  • We assessed the relationship between the canopy cover, with focus on cocoa agroforests, and the C-band synthetic aperture radar (SAR) backscatter intensity

  • Field inventory was conducted in two cocoa production landscapes in Cameroon that differ in vegetation structure, agricultural practice, and land tenure, amongst other livelihood and institutional difference

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Summary

Introduction

The spatial variability in canopy cover over forest land is a vital information for monitoring and assessing the influence of forest management practices on ecosystem services (ESs). Canopy cover refers to the proportion of the forest floor that is covered by the vertical (or map) projection of the tree crowns; it is different from canopy closure—the proportion of sky hemisphere obscured by vegetation when viewed from a single ground point [4]. Such distinction may be a necessary guide to field sampling and management of related ESs in different vegetation types and land uses. Besides the technical difficulties related to tree planting in CAFSs, farmers are unable to measure and maintain the, essentially theoretical, recommended shade proportion on farms [8,9]

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