Early Check in to Evaluate the Segmentation for Skin Lesions based on Modern Swarm Intelligence System.

Aljanabi, Mohanad and Abed, Jameel and Ajel, Ahmed (2020) Early Check in to Evaluate the Segmentation for Skin Lesions based on Modern Swarm Intelligence System. In: IMDC-SDSP 2020, 28-30 June 2020, Cyberspace.

[thumbnail of eai.28-6-2020.2298234.pdf]
eai.28-6-2020.2298234.pdf - Published Version

Download (715kB) | Preview


In recent years, the incidence of skin lesions has been one of the most rapidly increasing of all commonly occurring cancers. This deadliest form of melanoma must be detected early to be effectively treated. Because of the trouble and objectivity of human clarification, a significant research field has developed around the computerized examination of dermoscopy images. One reason to apply swarm intelligence systems is that an optimal solution can be advanced with a sensible computational application. This work introduces an artificial bee colony technique (ABC), distinctions, and applications. The planned ABC is a more suitable algorithm and one that requires smaller amounts of factors that need to be adjusted in comparison to other modern artificial swarm intelligence techniques (MASITs) for distinguishing unhealthy in skin tumor lesions. In these swarm's intelligence optimization algorithms have been positively executed for melanoma problems and provided extraordinary results guidance to better prediction and investigation of the skin cancer lesions. The experimental outcomes propose that the planned process proficient a developed accuracy associated to the ground truth (GT) used skin lesions’ dermatology. So, we will be able to use these in a future study with different databases.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: masits abc algorithm skin lesions image segmentation levels of melanomas
Subjects: Q Science > QA Mathematics > QA76 Computer software
Depositing User: EAI Editor III.
Date Deposited: 03 Mar 2021 08:56
Last Modified: 03 Mar 2021 08:56
URI: https://eprints.eudl.eu/id/eprint/998

Actions (login required)

View Item
View Item