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2024 | OriginalPaper | Buchkapitel

Texture Feature Extraction and Classification Using Machine Learning Techniques

verfasst von : Rohini A. Bhusnurmath, Shaila Doddamani

Erschienen in: Advances in Computing and Information

Verlag: Springer Nature Singapore

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Abstract

Texture, a crucial aspect of an image, is something made up of components that are related to one another. Reliable feature extraction in image files requires the use of a texture-based categorization method, which is significant. This study proposes an effective method for classifying textures using machine learning (ML) approaches. Using these ML classifiers, which are in the form of artificial intelligence (AI), programmers can predict results exactly without providing instructed to do so explicitly. The proposed study focuses on the creation of own dataset in the form of CSV file, to do so Haralick features (contrast, dissimilarity homogeneity, energy, and correlation) extracted from the Brodatz texture dataset. Different ML algorithms are used like: K-Nearest Neighbor, Decision Tree Classifier, Random Forest Classifier, Gradient Boosting Classifier, and AdaBoost Classifier which are experimented on the created dataset to classify the texture of Brodatz dataset. Proposed approach exhibits better results with 100% accuracy with less computation time as compared to previous work in the literature.

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Literatur
1.
Zurück zum Zitat Barnat-Hunek D, Omiotek Z, Szafraniec M, Dzierżak R (2021) An integrated texture analysis and machine learning approach for durability assessment of lightweight cement composites with hydrophobic coatings modified by nanocellulose. Measurement 179:109538CrossRef Barnat-Hunek D, Omiotek Z, Szafraniec M, Dzierżak R (2021) An integrated texture analysis and machine learning approach for durability assessment of lightweight cement composites with hydrophobic coatings modified by nanocellulose. Measurement 179:109538CrossRef
2.
Zurück zum Zitat Sethi K, Gupta A, Gupta G, Jaiswal V (2019) Comparative analysis of machine learning algorithms on different datasets. In: Circulation in computer science international conference on innovations in computing (ICIC 2017), vol 87 Sethi K, Gupta A, Gupta G, Jaiswal V (2019) Comparative analysis of machine learning algorithms on different datasets. In: Circulation in computer science international conference on innovations in computing (ICIC 2017), vol 87
3.
Zurück zum Zitat Hiremath PS, Bhusnurmath RA (2014) A novel approach to texture classification using NSCT and LDBP. Int J Comput Appl 0975-8887 Hiremath PS, Bhusnurmath RA (2014) A novel approach to texture classification using NSCT and LDBP. Int J Comput Appl 0975-8887
4.
Zurück zum Zitat Otchere DA, Ganat TOA, Gholami R, Ridha S (2021) Application of supervised machine learning paradigms in the prediction of petroleum reservoir properties: comparative analysis of ANN and SVM models. J Petrol Sci Eng 200:108182CrossRef Otchere DA, Ganat TOA, Gholami R, Ridha S (2021) Application of supervised machine learning paradigms in the prediction of petroleum reservoir properties: comparative analysis of ANN and SVM models. J Petrol Sci Eng 200:108182CrossRef
5.
Zurück zum Zitat Bari Antor M, Jamil AHM, Mamtaz M, Monirujjaman Khan M, Aljahdali S, Kaur M, ... Masud M (2021) A comparative analysis of machine learning algorithms to predict Alzheimer’s disease. J Healthc Eng 2021 Bari Antor M, Jamil AHM, Mamtaz M, Monirujjaman Khan M, Aljahdali S, Kaur M, ... Masud M (2021) A comparative analysis of machine learning algorithms to predict Alzheimer’s disease. J Healthc Eng 2021
6.
Zurück zum Zitat Budhi GS, Chiong R, Pranata I, Hu Z (2021) Using machine learning to predict the sentiment of online reviews: a new framework for comparative analysis. Arch Comput Methods Eng 28(4):2543–2566CrossRef Budhi GS, Chiong R, Pranata I, Hu Z (2021) Using machine learning to predict the sentiment of online reviews: a new framework for comparative analysis. Arch Comput Methods Eng 28(4):2543–2566CrossRef
7.
Zurück zum Zitat Garpebring A, Brynolfsson P, Kuess P, Georg D, Helbich TH, Nyholm T, Löfstedt T (2018) Density estimation of grey-level co-occurrence matrices for image texture analysis. Phys Med Biol 63(19):195017CrossRef Garpebring A, Brynolfsson P, Kuess P, Georg D, Helbich TH, Nyholm T, Löfstedt T (2018) Density estimation of grey-level co-occurrence matrices for image texture analysis. Phys Med Biol 63(19):195017CrossRef
8.
Zurück zum Zitat Hiremath PS, Bhusnurmath RA (2014) Texture classification using anisotropic diffusion and local directional binary pattern co-occurrence matrix. In: Proceedings of 2nd International conference on emerging research in computing, information, communication and applications (ERCICA 2014), vol 2, pp 763–769 Hiremath PS, Bhusnurmath RA (2014) Texture classification using anisotropic diffusion and local directional binary pattern co-occurrence matrix. In: Proceedings of 2nd International conference on emerging research in computing, information, communication and applications (ERCICA 2014), vol 2, pp 763–769
9.
Zurück zum Zitat Alharan AF, Fatlawi HK, Ali NS (2019) A cluster-based feature selection method for image texture classification. Indonesian J Electr Eng Comput Sci 14(3):1433–1442. Patel DR, Vakharia V, Kiran MB (2019) Texture classification of machined surfaces using image processing and machine learning techniques. FME Trans 47(4):865–872 Alharan AF, Fatlawi HK, Ali NS (2019) A cluster-based feature selection method for image texture classification. Indonesian J Electr Eng Comput Sci 14(3):1433–1442. Patel DR, Vakharia V, Kiran MB (2019) Texture classification of machined surfaces using image processing and machine learning techniques. FME Trans 47(4):865–872
10.
Zurück zum Zitat Armi L, Fekri-Ershad S (2019) Texture image analysis and texture classification methods—a review. arXiv preprint arXiv:1904.06554 Armi L, Fekri-Ershad S (2019) Texture image analysis and texture classification methods—a review. arXiv preprint arXiv:​1904.​06554
11.
Zurück zum Zitat Rao MS, Reddy BE, Kadiyala R, Prasanna K, Singh S (2021) Texture classification using Minkowski distance measure-based clustering for feature selection. J Electron Imaging 31(4):041204CrossRef Rao MS, Reddy BE, Kadiyala R, Prasanna K, Singh S (2021) Texture classification using Minkowski distance measure-based clustering for feature selection. J Electron Imaging 31(4):041204CrossRef
12.
Zurück zum Zitat Brodatz P (1966) Textures: a photographic album of artists and designers. Dover Publication, New York Brodatz P (1966) Textures: a photographic album of artists and designers. Dover Publication, New York
Metadaten
Titel
Texture Feature Extraction and Classification Using Machine Learning Techniques
verfasst von
Rohini A. Bhusnurmath
Shaila Doddamani
Copyright-Jahr
2024
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-7622-5_35

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