Abstract

Coffee is the second most valuable traded commodity worldwide. Brazil is the world’s largest coffee producer, responsible for one third of the world production. A coffee plot exhibits high and low production in alternated years, a characteristic so called biennial yield. High yield is generally a result of suitable conditions of foliar biomass. Moreover, in high production years one plot tends to lose more leaves than it does in low production years. In both cases some correlation between coffee yield and leaf biomass can be deduced which can be monitored through time series of vegetation indices derived from satellite imagery. In Brazil, a comprehensive, spatially distributed study assessing this relationship has not yet been done. The objective of this study was to assess possible correlations between coffee yield and MODIS derived vegetation indices in the Brazilian largest coffee-exporting province. We assessed EVI and NDVI MODIS products over the period between 2002 and 2009 in the south of Minas Gerais State whose production accounts for about one third of the Brazilian coffee production. Landsat images were used to obtain a reference map of coffee areas and to identify MODIS 250 m pure pixels overlapping homogeneous coffee crops. Only MODIS pixels with 100% coffee were included in the analysis. A wavelet-based filter was used to smooth EVI and NDVI time profiles. Correlations were observed between variations on yield of coffee plots and variations on vegetation indices for pixels overlapping the same coffee plots. The vegetation index metrics best correlated to yield were the amplitude and the minimum values over the growing season. The best correlations were obtained between variation on yield and variation on vegetation indices the previous year (R = 0.74 for minEVI metric and R = 0.68 for minNDVI metric). Although correlations were not enough to estimate coffee yield exclusively from vegetation indices, trends properly reflect the biennial bearing effect on coffee yield.

Highlights

  • Coffee crop is the second most traded commodity in the world, second only to the oil production chain

  • This study aimed to evaluate the potential of using NDVI and EVI indices generated from MODIS

  • NDVI and EVI minimum values have coincided with postharvest period, when the crop normally loses part of its leaf biomass due to damage caused by harvesting

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Summary

Introduction

Coffee crop is the second most traded commodity in the world, second only to the oil production chain. Brazil is the main coffee producer in the world. The coffee share in the Brazilian’s exports has declined over time due to product diversification, it is still an important generator of foreign currency for the country [1]. The use of remote sensing data to coffee crop has proved to be very promising, since there is difficulty in obtaining field data on a regional scale, especially for field mapping. In a comprehensive study to assess the accuracy of classification methods for coffee mapping in Costa Rica, Cordero-Sancho et al [2] considered the results obtained only moderate. The authors attributed the errors to topographic effects and to Landsat spatial resolution, which was insufficient to detect the average size of farms in the region.

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