Un análisis comparativo de los algoritmos Fast Radial Symmetry Transform y Hough Transform para la detección automática de granos de café en imágenes
Abstract
In this work we present a strategy that contributes to the overall solution of a
problem presented by the Costa Rica Co ee Institute (ICAFE). ICAFE owns a set
of coffee grains images and needs to nd an automatic way, through computer
vision, to detect and count the number of grains in each image in order to increase
the e ciency in the process of estimating yield.
A strategy to detect co ee grains in images is proposed, by combining the
algorithms Fast Radial Symmetry Transform[8] and Hough Transform[19]. Then,
this strategy is incorporated in the grain detection process of P-TRAP[13], an
open-source tool, to increase the precision in the detection of existing coffee grains.
The images are taken with a mobile device in a non-controlled environment in which
the grains are not pulled o their natural environment.
Likewise, a comparative analisis is done between the P-TRAP version developed in
this study and both algorithms running individually. The number of existing grains
in an image is determined manually. Then, the cherry detection process is executed
over each image and results are collected. Finally, a detailed analisis is done over
the results obtained.
Description
Proyecto de Graduación (Maestría en Computación) Instituto Tecnológico de Costa Rica, Escuela de Ingeniería en Computación, 2017.
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