Intelligent non-destructive classification of josapine pineapple maturity using artificial neural network

The pineapple maturity level also referred as pineapple maturity index is based on the percentage of yellowish that appears on the pineapple’s skin. In pineapple industry to determine the level of maturity, human experts adopt methods based on their subjective assessment of skin color. To this day,...

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Main Author: Nazriyah, Haji Che Zan @ Che Zain
Format: Thesis
Language:English
Published: 2016
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Online Access:http://umpir.ump.edu.my/id/eprint/16339/19/Intelligent%20non-destructive%20classification%20of%20josapine%20pineapple%20maturity%20using%20artificial%20neural%20network-.pdf
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spelling my-ump-ir.163392021-11-26T03:55:57Z Intelligent non-destructive classification of josapine pineapple maturity using artificial neural network 2016-09 Nazriyah, Haji Che Zan @ Che Zain Q Science (General) TK Electrical engineering. Electronics Nuclear engineering The pineapple maturity level also referred as pineapple maturity index is based on the percentage of yellowish that appears on the pineapple’s skin. In pineapple industry to determine the level of maturity, human experts adopt methods based on their subjective assessment of skin color. To this day, the pineapple maturity sorting process is still performed manually by expert human grader. So in order to reduce errors caused by human factors, there is a need to automate this process to an automated inspection system. The matured fruit harvested for the purposes of local sale or export is complete fruit with crown, fruit body and stump. However, in determining the pineapple maturity index, the main thing to be considered is only the pineapple fruit without crown. Fruit without crown also represents the actual size of the pineapple. Therefore the percentage of yellowish must be proportional to the size of the pineapple. Having extensive search of literatures found that studies of the size of the fruit, especially pineapple are very limited and only been started in recent years. To obtain the actual size of the fruit, the detection Region of Interest (ROI) is using segmentation method called minimum symmetrical edge distance. This minimum symmetrical edge distance algorithm wills geometrical rotated the pineapple images which to align with horizontal axis. Then the shortest vertical distances of the edge is calculated and converted to a background pixel, the largest region (fruit body) is maintained and the small region (crown) was abolished. The performance of segmentation algorithms are calculated using misclassification error that provides the rate of image pixels are incorrectly misclassified into the wrong segment. The results reveal that the algorithm used to achieve overall accuracy up to 99.05%. ROI that has been identified lengthened for feature extraction on the skin color of pineapple. Statistical based features namely minimum, maximum, arithmetic average and standard deviation were extracted from each image channels within detected ROI to represent pineapple skin color's tendency and dispersion. Next, classification index to determine the pineapple maturity level has been applied which are linear classification using thresholding value and artificial neural network adopting pattern recognition method. The results show that the classification using artificial neural network (pattern recognition) involving feature vectors arithmetic average and standard deviation for all channels R, G and B give the average correct classification rate of 88.89%. 2016-09 Thesis http://umpir.ump.edu.my/id/eprint/16339/ http://umpir.ump.edu.my/id/eprint/16339/19/Intelligent%20non-destructive%20classification%20of%20josapine%20pineapple%20maturity%20using%20artificial%20neural%20network-.pdf pdf en public masters Universiti Malaysia Pahang Faculty of Electrical and Electronics Engineering
institution Universiti Malaysia Pahang Al-Sultan Abdullah
collection UMPSA Institutional Repository
language English
topic Q Science (General)
Q Science (General)
spellingShingle Q Science (General)
Q Science (General)
Nazriyah, Haji Che Zan @ Che Zain
Intelligent non-destructive classification of josapine pineapple maturity using artificial neural network
description The pineapple maturity level also referred as pineapple maturity index is based on the percentage of yellowish that appears on the pineapple’s skin. In pineapple industry to determine the level of maturity, human experts adopt methods based on their subjective assessment of skin color. To this day, the pineapple maturity sorting process is still performed manually by expert human grader. So in order to reduce errors caused by human factors, there is a need to automate this process to an automated inspection system. The matured fruit harvested for the purposes of local sale or export is complete fruit with crown, fruit body and stump. However, in determining the pineapple maturity index, the main thing to be considered is only the pineapple fruit without crown. Fruit without crown also represents the actual size of the pineapple. Therefore the percentage of yellowish must be proportional to the size of the pineapple. Having extensive search of literatures found that studies of the size of the fruit, especially pineapple are very limited and only been started in recent years. To obtain the actual size of the fruit, the detection Region of Interest (ROI) is using segmentation method called minimum symmetrical edge distance. This minimum symmetrical edge distance algorithm wills geometrical rotated the pineapple images which to align with horizontal axis. Then the shortest vertical distances of the edge is calculated and converted to a background pixel, the largest region (fruit body) is maintained and the small region (crown) was abolished. The performance of segmentation algorithms are calculated using misclassification error that provides the rate of image pixels are incorrectly misclassified into the wrong segment. The results reveal that the algorithm used to achieve overall accuracy up to 99.05%. ROI that has been identified lengthened for feature extraction on the skin color of pineapple. Statistical based features namely minimum, maximum, arithmetic average and standard deviation were extracted from each image channels within detected ROI to represent pineapple skin color's tendency and dispersion. Next, classification index to determine the pineapple maturity level has been applied which are linear classification using thresholding value and artificial neural network adopting pattern recognition method. The results show that the classification using artificial neural network (pattern recognition) involving feature vectors arithmetic average and standard deviation for all channels R, G and B give the average correct classification rate of 88.89%.
format Thesis
qualification_level Master's degree
author Nazriyah, Haji Che Zan @ Che Zain
author_facet Nazriyah, Haji Che Zan @ Che Zain
author_sort Nazriyah, Haji Che Zan @ Che Zain
title Intelligent non-destructive classification of josapine pineapple maturity using artificial neural network
title_short Intelligent non-destructive classification of josapine pineapple maturity using artificial neural network
title_full Intelligent non-destructive classification of josapine pineapple maturity using artificial neural network
title_fullStr Intelligent non-destructive classification of josapine pineapple maturity using artificial neural network
title_full_unstemmed Intelligent non-destructive classification of josapine pineapple maturity using artificial neural network
title_sort intelligent non-destructive classification of josapine pineapple maturity using artificial neural network
granting_institution Universiti Malaysia Pahang
granting_department Faculty of Electrical and Electronics Engineering
publishDate 2016
url http://umpir.ump.edu.my/id/eprint/16339/19/Intelligent%20non-destructive%20classification%20of%20josapine%20pineapple%20maturity%20using%20artificial%20neural%20network-.pdf
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