| dc.description.abstract |
Abstract: - Coffee grading is the main procedure in producing
homogenous local commercial fair system of pricing in the
market and export. Grading coffee is a difficult task during the
inspection, because it requires training and experience of the
experts. In order to tackle grading difficulties in coffee producing
industries and corporates have been employed and trained
experts. Even if, those experts do not work effectively due to
tiredness, costly, time consuming, inconsistency, bias and other
factors. Digital image processing techniques based on
automatically extracted features have been explored to classify
Ethiopian coffee to corresponding quality grade labels. Samples
of those coffee beans were taken from Yirgacheffe Coffee
Farmers’ Cooperative Union. On average, 228 images were taken
from each of three grade values or levels (grade 1, grade 2 and
grade 3). The total number of images taken was 684 containing
6138 coffee beans. To extract coffee bean features and build a
classification model for grading coffee, the state of art deep
learning algorithm called convolutional Neural Network was
used. Base on the experimental results classification accuracy
obtained with testing coffee bean images for grade 1, grade 2 and
grade 3 coffee beans was 99.51%, 97.56%, and 98.04%,
respectively with the overall classification accuracy of 98.38%.
This shows a promising result, even if, images are captured under
the challenging condition without laboratory setup, such as
illumination, different resolution, shadow and orientation which
affects greatly the performance of the classifier and hence they are
the future research direction that needs further investigations of
noise removal techniques. |
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