Fermented Cacao Bean Classification Based On Statistical Features And Convolutional Neural Network
Abstract
Theobroma cacao – also known as “cacao” – is an important tropical plant which produce
cacao bean - the key ingredient for the world chocolate industry. The chocolate making
process begin with the fresh cacao bean harvested from the ripped cacao fruit, in many
regions of the world, the beans then usually left in the open air for natural fermentation
process before crushing into powder for the next process. This fermentation process
effectiveness is not consistent due to numerous unpredictable elements from the
environment, thus lead to the variation in beans quality. The traditional technique for
fermented cacao bean quality inspection is using human naked eyes. Previous research has
implemented several qualitative methods, however those method require specialized tool as
well as well as expertise human resource. In this paper, we propose two approaches for
classifying cacao bean based on one single captured image of the cacao bean cross-section
when performing a cut-test. The first approach utilized the forefront deep learning algorithm
while the second approach framework is based on extracted features by image processing
and classify using a multi-layer perceptron. After testing, both approaches performance can
be considered as good enough to be applied in practice, however the second approach show
its superior traits in accuracy. In the future, these models can be implemented in mobile
device to help farmers improve their cacao quality control precision, cutting cost caused by
misclassification