Multi-Objective Whole Slide Image Segmentation Using Nature Inspired Whale Optimization Algorithm
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| Keywords | |
| Abstract |
For precise histopathological image analysis and classification, segmentation is a critical step that must be carried out accurately. Segmentation aids early detection and diagnosis of tumor and cancerous cells. Machine learning and artificial intelligence processes play a vital role in image processing applications. In this proposed work, the nature-inspired Whale Optimization Algorithm is used for the segmentation of whole slide images through multi-objective image thresholding. The images are subjected to initial pre-processing to eliminate disturbance and enhancement, followed by the application of the best threshold value. Various histopathology images are examined to validate the efficiency and versatility of the proposed methodology. A Dice coefficient of 50.8, a Jaccard index of 51.33, a Precision of 51.22, a Sensitivity of 71.59, an Accuracy of 91.86, an F-measure of 50.76, and a Specificity of 71.17 were the average results obtained for the tested images using the proposed system. The outcomes are assessed with other common segmentation approaches, validating the algorithm. |
| Year of Publication |
2025
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| Journal |
SSRG International Journal of Electrical and Electronics Engineering
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| Volume |
12
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| Issue |
9
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| Number of Pages |
202-214,
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| Type of Article |
Article
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| URL |
https://www.internationaljournalssrg.org/IJEEE/paper-details?Id=1161
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| DOI |
10.14445/23488379/IJEEE-V12I9P121
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| Alternate Journal |
SSRG. Int. J. Electr. Electron. Eng.
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| Publisher |
Seventh Sense Research Group
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Journal Article
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| Download citation | |
| Cits |
0
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