Title
Coffee plantation area recognition in satellite images using Fourier transform.
Abstract
A machine vision scheme is proposed for coffee plantation area recognition in satellite images.This study presents a Fourier transform-based method to extract structural features for image segmentation.This paper distinguishes the row-planted coffee field from irrelevant vegetation areas in the satellite image. In this study, a machine vision scheme is proposed for coffee plantation area recognition in satellite images. It automatically segments the row-planted coffee field from forest trees and irrelevant areas in the image. The result can be used for coffee yield estimation to improve the supply and demand of coffee commodity in the market. Commercial coffee plantation grows coffee trees in rows along a specific direction to increase the production yield and management efficiency. The coffee plants and forest trees present the same color tone in the image and, thus, color cannot be used for the discrimination. The row-planting pattern of coffee trees shows structural texture in the satellite image. This study presents a Fourier transform-based method to extract structural features in the spectral domain for image segmentation. Row-planted coffee fields generate high-energy frequency components in a single direction, while naturally-growing plants present omnidirectional frequency components in the spectral domain image. The main frequency in the power spectrum indicates the number of parallel lines in a small patch window and, thus, gives the density feature. The density feature for the row-planted coffee filed is equivalent to the number of rows in a unit square area, whereas it is only one for the randomly-growing plants. This study analyzes the satellite images of coffee plantation regions in different times with varying illuminations and growing stages in Brazil, Africa, Vietnam and Hawaii. The experimental results have shown that the Fourier-based structural and density features can provide correct segmentation to distinguish the row-planted coffee field from irrelevant vegetation areas in the satellite image.
Year
DOI
Venue
2017
10.1016/j.compag.2016.12.020
Computers and Electronics in Agriculture
Keywords
Field
DocType
Coffee plantation,Machine vision,Image segmentation,Fourier transform,Texture analysis,Satellite images
Row,Computer vision,Satellite,Machine vision,Segmentation,Remote sensing,Fourier transform,Image segmentation,Spectral density,Parallel,Artificial intelligence,Engineering
Journal
Volume
Issue
ISSN
135
C
0168-1699
Citations 
PageRank 
References 
1
0.41
9
Authors
2
Name
Order
Citations
PageRank
Du-Ming Tsai197068.17
Wan-Ling Chen210.41