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Plant sciences, sustainable farming systems and food quality
RESEARCH ARTICLE

UAV remote sensing of spatial variation in banana production

Brian L. Machovina A C , Kenneth J. Feeley A and Brett J. Machovina B
+ Author Affiliations
- Author Affiliations

A Department of Biological Sciences, Florida International University, Miami, FL 33199, USA; and The Fairchild Tropical Botanic Garden, Coral Gables, FL 33156, USA.

B Department of Economics and Geosciences, United States Air Force Academy, CO 97331, USA.

C Corresponding author. Email: brianmachovina@gmail.com

Crop and Pasture Science 67(12) 1281-1287 https://doi.org/10.1071/CP16135
Submitted: 12 April 2016  Accepted: 3 October 2016   Published: 23 November 2016

Abstract

Remote sensing through Unmanned Aerial Vehicles (UAV) can potentially be used to identify the factors influencing agricultural yield and thereby increase production efficiency. The use of UAV remains largely underutilised in tropical agricultural systems. In this study we tested a fixed-wing UAV system equipped with a sensor system for mapping spatial patterns of photosynthetic activity in banana plantations in Costa Rica. Spatial patterns derived from the Normalised Difference Vegetation Index (NDVI) were compared with spatial patterns of physical soil quality and banana fruit production data. We found spatial patterns of NDVI were significantly positively correlated with spatial patterns of several metrics of fruit yield and quality: bunch weight, number of hands per bunch, length of largest finger, and yield. NDVI was significantly negatively correlated with banana loss (discarded due to low quality). Spatial patterns of NDVI were not correlated with spatial patterns of physical soil quality. These results indicate that UAV systems can be used in banana plantations to help map patterns of fruit quality and yield, potentially aiding investigations of spatial patterns of underlying factors affecting production and thereby helping to increase agricultural efficiency.

Additional keywords: crop productivity, Musa, NDVI.


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