An Enhanced Texture-Based Feature Extraction Approach for Classification of Biomedical Images of CT-Scan of Lungs

Content Based Image Retrieval (CBIR) techniques based on texture have gained a lot of popularity in recent times. In the proposed work, a feature vector is obtained by concatenation of features extracted from local mesh peak valley edge pattern (LMePVEP) technique; a dynamic threshold based local me...

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Veröffentlicht in:International journal of interactive multimedia and artificial intelligence 2021-09, Vol.6 (7), p.18-25
Hauptverfasser: Srivastava, Varun, Gupta, Shilpa, Chaudhary, Gopal, Balodi, Arun, Khari, Manju, Garcia-Diaz, Vicente
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Sprache:eng
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Zusammenfassung:Content Based Image Retrieval (CBIR) techniques based on texture have gained a lot of popularity in recent times. In the proposed work, a feature vector is obtained by concatenation of features extracted from local mesh peak valley edge pattern (LMePVEP) technique; a dynamic threshold based local mesh ternary pattern technique and texture of the image in five different directions. The concatenated feature vector is then used to classify images of two datasets viz. Emphysema dataset and Early Lung Cancer Action Program (ELCAP) lung database. The proposed framework has improved the accuracy by 12.56%, 9.71% and 7.01% in average for data set 1 and 9.37%, 8.99% and 7.63% in average for dataset 2 over three popular algorithms used for image retrieval. KEYWORDS Image Retrieval, Local Mesh Peak Valley Edge Patterns, Local Patterns, Bio-medical Image Classification, Texture-based Retrieval.
ISSN:1989-1660
1989-1660
DOI:10.9781/ijimai.2020.11.003