Local texture representation for timber defect recognition based on variation of LBP
This paper evaluates timber defect classification performance across four various Local Binary Patterns (LBP). The light and heavy timber used in the study are Rubberwood, KSK, Merbau, and Meranti, and eight natural timber defects involved; bark pocket, blue stain, borer holes, brown stain, knot, ro...
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2022
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my.utem.eprints.263822023-03-28T14:15:00Z http://eprints.utem.edu.my/id/eprint/26382/ Local texture representation for timber defect recognition based on variation of LBP Rahiddin, Rahillda Nadhirah Norizzaty Hashim, Ummi Rabaah Salahuddin, Lizawati Kanchymalay, Kasturi Wibawa, Aji Prasetya Teo, Hong Chun This paper evaluates timber defect classification performance across four various Local Binary Patterns (LBP). The light and heavy timber used in the study are Rubberwood, KSK, Merbau, and Meranti, and eight natural timber defects involved; bark pocket, blue stain, borer holes, brown stain, knot, rot, split, and wane. A series of LBP feature sets were created by employing the Basic LBP, Rotation Invariant LBP, Uniform LBP, and Rotation Invariant Uniform LBP in a phase of feature extraction procedures. Several common classifiers were used to further separate the timber defect classes, which are Artificial Neural Network (ANN), J48 Decision Tree (J48), and K-Nearest Neighbor (KNN). Uniform LBP with ANN classifier provides the best performance at 63.4%, superior to all other LBP types. Features from Merbau provide the greatest F-measure when comparing the performance of the ANN classifier with Uniform LBP across timber fault classes and clean wood, surpassing other feature sets. Science and Information Organization 2022 Article PeerReviewed text en http://eprints.utem.edu.my/id/eprint/26382/2/2022-LOCAL_TEXTURE_REPRESENTATION_FOR_TIMBER_DEFECT_RECOGNITION.PDF Rahiddin, Rahillda Nadhirah Norizzaty and Hashim, Ummi Rabaah and Salahuddin, Lizawati and Kanchymalay, Kasturi and Wibawa, Aji Prasetya and Teo, Hong Chun (2022) Local texture representation for timber defect recognition based on variation of LBP. International Journal of Advanced Computer Science and Applications, 13 (10). pp. 443-448. ISSN 2158-107X https://thesai.org/Downloads/Volume13No10/Paper_53-Local_Texture_Representation_for_Timber_Defect_Recognition.pdf 10.14569/IJACSA.2022.0131053 |
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This paper evaluates timber defect classification performance across four various Local Binary Patterns (LBP). The light and heavy timber used in the study are Rubberwood, KSK, Merbau, and Meranti, and eight natural timber defects involved; bark pocket, blue stain, borer holes, brown stain, knot, rot, split, and wane. A series of LBP feature sets were created by employing the Basic LBP, Rotation Invariant LBP, Uniform LBP, and Rotation Invariant Uniform LBP in a phase of feature extraction procedures. Several common classifiers were used to further separate the timber defect classes, which are Artificial Neural Network (ANN), J48 Decision Tree (J48), and K-Nearest Neighbor (KNN). Uniform LBP with ANN classifier provides the best performance at 63.4%, superior to all other LBP types. Features from Merbau provide the greatest F-measure when comparing the performance of the ANN classifier with Uniform LBP across timber fault classes and clean wood, surpassing other feature sets. |
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Rahiddin, Rahillda Nadhirah Norizzaty Hashim, Ummi Rabaah Salahuddin, Lizawati Kanchymalay, Kasturi Wibawa, Aji Prasetya Teo, Hong Chun |
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Rahiddin, Rahillda Nadhirah Norizzaty Hashim, Ummi Rabaah Salahuddin, Lizawati Kanchymalay, Kasturi Wibawa, Aji Prasetya Teo, Hong Chun Local texture representation for timber defect recognition based on variation of LBP |
author_facet |
Rahiddin, Rahillda Nadhirah Norizzaty Hashim, Ummi Rabaah Salahuddin, Lizawati Kanchymalay, Kasturi Wibawa, Aji Prasetya Teo, Hong Chun |
author_sort |
Rahiddin, Rahillda Nadhirah Norizzaty |
title |
Local texture representation for timber defect recognition based on variation of LBP |
title_short |
Local texture representation for timber defect recognition based on variation of LBP |
title_full |
Local texture representation for timber defect recognition based on variation of LBP |
title_fullStr |
Local texture representation for timber defect recognition based on variation of LBP |
title_full_unstemmed |
Local texture representation for timber defect recognition based on variation of LBP |
title_sort |
local texture representation for timber defect recognition based on variation of lbp |
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Science and Information Organization |
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2022 |
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http://eprints.utem.edu.my/id/eprint/26382/2/2022-LOCAL_TEXTURE_REPRESENTATION_FOR_TIMBER_DEFECT_RECOGNITION.PDF http://eprints.utem.edu.my/id/eprint/26382/ https://thesai.org/Downloads/Volume13No10/Paper_53-Local_Texture_Representation_for_Timber_Defect_Recognition.pdf |
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