Maturity classification of cacao through spectrogram and convolutional neural network

Cacao pod's ideal harvesting time is when it is about to be ripe. Immature harvest would result in hard cacao beans not suitable for fermentation, while overripe cacao pods lead to fungal-infected, defective, and poor-quality yields. The demand for high-quality cacao products is expected to ris...

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Main Authors: Gilbert E. Bueno, Kristine A. Valenzuela, Edwin R. Arboleda
Format: Article
Language:English
Published: Diponegoro University 2020-07-01
Series:Jurnal Teknologi dan Sistem Komputer
Subjects:
cnn
Online Access:https://jtsiskom.undip.ac.id/index.php/jtsiskom/article/view/13733
id doaj-6848bf50a6d6472d8557e9966c917194
record_format Article
spelling doaj-6848bf50a6d6472d8557e9966c9171942021-10-02T15:30:36ZengDiponegoro UniversityJurnal Teknologi dan Sistem Komputer2338-04032020-07-018322823310.14710/jtsiskom.2020.1373312830Maturity classification of cacao through spectrogram and convolutional neural networkGilbert E. Bueno0Kristine A. Valenzuela1Edwin R. Arboleda2https://orcid.org/0000-0001-9371-8895Department of Computer and Electronics Engineering, Cavite State University, PhilippinesDepartment of Computer and Electronics Engineering, Cavite State University, PhilippinesDepartment of Computer and Electronics Engineering, Cavite State University, PhilippinesCacao pod's ideal harvesting time is when it is about to be ripe. Immature harvest would result in hard cacao beans not suitable for fermentation, while overripe cacao pods lead to fungal-infected, defective, and poor-quality yields. The demand for high-quality cacao products is expected to rise due to advancing technology in the present. Pre-harvesting needs to provide optimal identification of which amongst the pods are ripened enough and ready for the next stage of the cacao process. This paper recommends a technique to determine the ripeness of cacao. Nine hundred thirty-three cacao samples were used to collect thumping audio data at five different pod's exocarp locations. Each sound file is 1 second long, creating 4665 cacao sound file datasets at 16kHz sample rate and 16-bit audio bit depth. The process of the Mel-Frequency Cepstral Coefficient Spectogram was then applied to extract recognizable features for the training process. The deep learning method integrated was a convolutional neural network (CNN) to classify the cacao sound successfully. The experimental design model's output exhibits an accuracy of 97.50 % for the training data and 97.13 % for the validation data. While the overall accuracy mean of the classification system is 97.46 %, whether the cacao is unripe or ripe.https://jtsiskom.undip.ac.id/index.php/jtsiskom/article/view/13733cacaocnndeep learningfeature extractionmaturity levelspectogram
collection DOAJ
language English
format Article
sources DOAJ
author Gilbert E. Bueno
Kristine A. Valenzuela
Edwin R. Arboleda
spellingShingle Gilbert E. Bueno
Kristine A. Valenzuela
Edwin R. Arboleda
Maturity classification of cacao through spectrogram and convolutional neural network
Jurnal Teknologi dan Sistem Komputer
cacao
cnn
deep learning
feature extraction
maturity level
spectogram
author_facet Gilbert E. Bueno
Kristine A. Valenzuela
Edwin R. Arboleda
author_sort Gilbert E. Bueno
title Maturity classification of cacao through spectrogram and convolutional neural network
title_short Maturity classification of cacao through spectrogram and convolutional neural network
title_full Maturity classification of cacao through spectrogram and convolutional neural network
title_fullStr Maturity classification of cacao through spectrogram and convolutional neural network
title_full_unstemmed Maturity classification of cacao through spectrogram and convolutional neural network
title_sort maturity classification of cacao through spectrogram and convolutional neural network
publisher Diponegoro University
series Jurnal Teknologi dan Sistem Komputer
issn 2338-0403
publishDate 2020-07-01
description Cacao pod's ideal harvesting time is when it is about to be ripe. Immature harvest would result in hard cacao beans not suitable for fermentation, while overripe cacao pods lead to fungal-infected, defective, and poor-quality yields. The demand for high-quality cacao products is expected to rise due to advancing technology in the present. Pre-harvesting needs to provide optimal identification of which amongst the pods are ripened enough and ready for the next stage of the cacao process. This paper recommends a technique to determine the ripeness of cacao. Nine hundred thirty-three cacao samples were used to collect thumping audio data at five different pod's exocarp locations. Each sound file is 1 second long, creating 4665 cacao sound file datasets at 16kHz sample rate and 16-bit audio bit depth. The process of the Mel-Frequency Cepstral Coefficient Spectogram was then applied to extract recognizable features for the training process. The deep learning method integrated was a convolutional neural network (CNN) to classify the cacao sound successfully. The experimental design model's output exhibits an accuracy of 97.50 % for the training data and 97.13 % for the validation data. While the overall accuracy mean of the classification system is 97.46 %, whether the cacao is unripe or ripe.
topic cacao
cnn
deep learning
feature extraction
maturity level
spectogram
url https://jtsiskom.undip.ac.id/index.php/jtsiskom/article/view/13733
work_keys_str_mv AT gilbertebueno maturityclassificationofcacaothroughspectrogramandconvolutionalneuralnetwork
AT kristineavalenzuela maturityclassificationofcacaothroughspectrogramandconvolutionalneuralnetwork
AT edwinrarboleda maturityclassificationofcacaothroughspectrogramandconvolutionalneuralnetwork
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