ENSEMBLE DEEP LEARNING FOR QUALITY CLASSIFICATION SYSTEM OF COFFEE BEANS BASED ON MULTI-COLOR WITH THE UTILIZATION OF SUPER-RESOLUTION BASED ON CONVOLUTIONAL NEURAL NETWORK FOR INPUT IMAGES

Coffee is one of Indonesia's main commodities that significantly contributes to the country's foreign exchange. The quality of coffee beans affects both flavor and price, with quality standards referencing SNI 01-2907-2008. Currently, the quality assurance process for coffee is still manua...

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Main Author: Norman Firdaus, Achmad
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/84262
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:84262
spelling id-itb.:842622024-08-14T16:45:16ZENSEMBLE DEEP LEARNING FOR QUALITY CLASSIFICATION SYSTEM OF COFFEE BEANS BASED ON MULTI-COLOR WITH THE UTILIZATION OF SUPER-RESOLUTION BASED ON CONVOLUTIONAL NEURAL NETWORK FOR INPUT IMAGES Norman Firdaus, Achmad Indonesia Theses FSRCNN, soft-voting, SOTA deep learning, color spaces, segmentation. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/84262 Coffee is one of Indonesia's main commodities that significantly contributes to the country's foreign exchange. The quality of coffee beans affects both flavor and price, with quality standards referencing SNI 01-2907-2008. Currently, the quality assurance process for coffee is still manual, utilizing human visual organoleptic classification, which is time-consuming. To address this complexity, an automation system based on computer vision is necessary. Computer vision leverages visual information for decision-making and requires machine learning to recognize visual patterns. Deep learning, especially Convolutional Neural Networks (CNN), is effective in image feature extraction and can achieve coffee bean classification accuracy above 80%. The training procedure involves training data organized by certified assessors, with uniform lighting to avoid shadows. Training data is collected in a large container holding 1,053 coffee beans. Automatic segmentation techniques produce single coffee bean images, which are then cleaned of overlapping features. These single images have a resolution below the standard required by state-of-the-art (SOTA) deep learning, necessitating resolution enhancement through super-resolution. CNN-based super-resolution increases image resolution to enrich features, thereby enhancing the capabilities of SOTA deep learning models resulting from training. This improvement can be seen in the model's generalization and accuracy. Training involves four current deep learning models with seven color spaces (RGB, HSV, CIE LAB, XYZ, YCrCb, HLS, LUV) to better understand the defect features of coffee beans. The training results are combined with the soft-voting technique of ensemble learning, producing an accurate and robust model. Model evaluation using a confusion matrix shows 100% accuracy for super-resolved images using the FSRCNN (Fast Super-Resolution Convolutional Neural Network) method. This method addresses the ill-posed problem in resize interpolation methods, using convolution layers for feature extraction and deconvolution layers for resolution enlargement. The model remains accurate within the range of 99%- 100% even when the training data scheme is reduced to 30%, demonstrating good generalization. Keywords: FSRCNN, soft-voting, SOTA deep learning, color spaces, segmentation. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Coffee is one of Indonesia's main commodities that significantly contributes to the country's foreign exchange. The quality of coffee beans affects both flavor and price, with quality standards referencing SNI 01-2907-2008. Currently, the quality assurance process for coffee is still manual, utilizing human visual organoleptic classification, which is time-consuming. To address this complexity, an automation system based on computer vision is necessary. Computer vision leverages visual information for decision-making and requires machine learning to recognize visual patterns. Deep learning, especially Convolutional Neural Networks (CNN), is effective in image feature extraction and can achieve coffee bean classification accuracy above 80%. The training procedure involves training data organized by certified assessors, with uniform lighting to avoid shadows. Training data is collected in a large container holding 1,053 coffee beans. Automatic segmentation techniques produce single coffee bean images, which are then cleaned of overlapping features. These single images have a resolution below the standard required by state-of-the-art (SOTA) deep learning, necessitating resolution enhancement through super-resolution. CNN-based super-resolution increases image resolution to enrich features, thereby enhancing the capabilities of SOTA deep learning models resulting from training. This improvement can be seen in the model's generalization and accuracy. Training involves four current deep learning models with seven color spaces (RGB, HSV, CIE LAB, XYZ, YCrCb, HLS, LUV) to better understand the defect features of coffee beans. The training results are combined with the soft-voting technique of ensemble learning, producing an accurate and robust model. Model evaluation using a confusion matrix shows 100% accuracy for super-resolved images using the FSRCNN (Fast Super-Resolution Convolutional Neural Network) method. This method addresses the ill-posed problem in resize interpolation methods, using convolution layers for feature extraction and deconvolution layers for resolution enlargement. The model remains accurate within the range of 99%- 100% even when the training data scheme is reduced to 30%, demonstrating good generalization. Keywords: FSRCNN, soft-voting, SOTA deep learning, color spaces, segmentation.
format Theses
author Norman Firdaus, Achmad
spellingShingle Norman Firdaus, Achmad
ENSEMBLE DEEP LEARNING FOR QUALITY CLASSIFICATION SYSTEM OF COFFEE BEANS BASED ON MULTI-COLOR WITH THE UTILIZATION OF SUPER-RESOLUTION BASED ON CONVOLUTIONAL NEURAL NETWORK FOR INPUT IMAGES
author_facet Norman Firdaus, Achmad
author_sort Norman Firdaus, Achmad
title ENSEMBLE DEEP LEARNING FOR QUALITY CLASSIFICATION SYSTEM OF COFFEE BEANS BASED ON MULTI-COLOR WITH THE UTILIZATION OF SUPER-RESOLUTION BASED ON CONVOLUTIONAL NEURAL NETWORK FOR INPUT IMAGES
title_short ENSEMBLE DEEP LEARNING FOR QUALITY CLASSIFICATION SYSTEM OF COFFEE BEANS BASED ON MULTI-COLOR WITH THE UTILIZATION OF SUPER-RESOLUTION BASED ON CONVOLUTIONAL NEURAL NETWORK FOR INPUT IMAGES
title_full ENSEMBLE DEEP LEARNING FOR QUALITY CLASSIFICATION SYSTEM OF COFFEE BEANS BASED ON MULTI-COLOR WITH THE UTILIZATION OF SUPER-RESOLUTION BASED ON CONVOLUTIONAL NEURAL NETWORK FOR INPUT IMAGES
title_fullStr ENSEMBLE DEEP LEARNING FOR QUALITY CLASSIFICATION SYSTEM OF COFFEE BEANS BASED ON MULTI-COLOR WITH THE UTILIZATION OF SUPER-RESOLUTION BASED ON CONVOLUTIONAL NEURAL NETWORK FOR INPUT IMAGES
title_full_unstemmed ENSEMBLE DEEP LEARNING FOR QUALITY CLASSIFICATION SYSTEM OF COFFEE BEANS BASED ON MULTI-COLOR WITH THE UTILIZATION OF SUPER-RESOLUTION BASED ON CONVOLUTIONAL NEURAL NETWORK FOR INPUT IMAGES
title_sort ensemble deep learning for quality classification system of coffee beans based on multi-color with the utilization of super-resolution based on convolutional neural network for input images
url https://digilib.itb.ac.id/gdl/view/84262
_version_ 1822010322225987584