Novel multiple pooling and local phase quantization stable feature extraction techniques for automated classification of brain infarcts
Article
Article Title | Novel multiple pooling and local phase quantization stable feature extraction techniques for automated classification of brain infarcts |
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ERA Journal ID | 211872 |
Article Category | Article |
Authors | Dogan, Sengul, Barua, Prabal Datta, Baygin, Mehmet, Chakraborty, Subrata, Ciaccio, Edward J., Tuncer, Turker, Kadir, Khairul Azmi Abd, Shah, Mohammad Nazri Md, Azman, Raja Rizal, Lee, Chin Chew, Ng, Kwan Hoong and Acharya, U. Rajendra |
Journal Title | Biocybernetics and Biomedical Engineering |
Journal Citation | 42 (3), pp. 815-828 |
Number of Pages | 14 |
Year | 2022 |
Publisher | Elsevier BV |
Place of Publication | Netherlands |
ISSN | 0208-5216 |
2391-467X | |
Digital Object Identifier (DOI) | https://doi.org/10.1016/j.bbe.2022.06.004 |
Web Address (URL) | https://www.sciencedirect.com/science/article/pii/S0208521622000602 |
Abstract | This study aims to introduce a hand-crafted machine learning method to classify ischemic and hemorrhagic strokes with satisfactory performance. In the first step of this work, a new CT brain for images dataset was collected for stroke patients. A highly accurate hand-crafted machine learning method is developed and tested for these cases. This model uses preprocessing, feature creation using a novel pooling method (it is named P9), a local phase quantization (LPQ) operator, and a Chi2-based selector responsible for selecting the most significant features. After that, classification is done using the k-nearest neighbor (kNN) classifier with ten-fold cross-validation (CV). The novel aspect of this model is the P9 pooling method. The inspiration for this pooling method was drawn from the deep learning models, where features are extracted with multiple layers using a convolution operator applied to the pooling method. However, pooling decompositions have a routing problem. The P9 pooling function creates nine decomposed models, hence the name. The LPQ feature extractor is applied to images to generate sub-bands for feature generation. The Chi2 selector is then employed to select the most significant features from the created feature vector, and these features are utilized for the classification using the k-nearest neighbor algorithm (kNN). The introduced P9-LPQ feature extraction-based learning model attained over 98% classification accuracy in all cases. The results obtained in this paper show that the proposed method can successfully classify stroke types. For this reason, the developed model can pre-diagnose stroke types in the future. |
Keywords | Brain image classification; Chi2 selection; Computer vision; Hand-crafted features; LPQ; P9 pooling |
Contains Sensitive Content | Does not contain sensitive content |
ANZSRC Field of Research 2020 | 400306. Computational physiology |
Public Notes | Files associated with this item cannot be displayed due to copyright restrictions. |
Byline Affiliations | Ngee Ann Polytechnic, Singapore |
Singapore University of Social Sciences (SUSS), Singapore | |
Asia University, Taiwan | |
Firat University, Turkey | |
School of Business | |
University of Technology Sydney | |
Cogninet Australia, Australia | |
Ardahan University, Turkiye | |
University of New England | |
Columbia University, United States | |
University of Malaya, Malaysia | |
University of Malaya Medical Centre, Malaysia |
https://research.usq.edu.au/item/yywv9/novel-multiple-pooling-and-local-phase-quantization-stable-feature-extraction-techniques-for-automated-classification-of-brain-infarcts
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