2022
DOI: 10.1155/2022/7502504
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MSeg-Net: A Melanoma Mole Segmentation Network Using CornerNet and Fuzzy K -Means Clustering

Abstract: Melanoma is a dangerous form of skin cancer that results in the demise of patients at the developed stage. Researchers have attempted to develop automated systems for the timely recognition of this deadly disease. However, reliable and precise identification of melanoma moles is a tedious and complex activity as there exist huge differences in the mass, structure, and color of the skin lesions. Additionally, the incidence of noise, blurring, and chrominance changes in the suspected images further enhance the c… Show more

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Cited by 5 publications
(3 citation statements)
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“…The end-to-end approach treats segmentation and identification as inherently connected methods, where a high Jaccard index also indicates the stability of melanoma identification. Nawaz M et al [7] present a deep learning approach to overcome the limitations of previous work. After completing the pre-processing procedure, they utilize the Corner-Net framework, an image detection technique, to diagnose melanoma lesions.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…The end-to-end approach treats segmentation and identification as inherently connected methods, where a high Jaccard index also indicates the stability of melanoma identification. Nawaz M et al [7] present a deep learning approach to overcome the limitations of previous work. After completing the pre-processing procedure, they utilize the Corner-Net framework, an image detection technique, to diagnose melanoma lesions.…”
Section: Related Workmentioning
confidence: 99%
“…The presence of noise or blurring, along with luminance modifications in suspicious images, contributes to making detection more complex. To overcome the limitations of previous research, we demonstrate a DL model in this paper [7]. Excessive sunlight exposure can often be attributed as the cause of melanoma, with digital dermoscopy serving as a tool for identifying cancerous areas within skin lesions.…”
Section: Introductionmentioning
confidence: 99%
“…In order to evaluate the impact of YOLOv8-ASFF on detecting tea leaf blight, tea white spot disease, and tea sooty disease in Yunnan large-leaf tea, four sets of comparative experiments were conducted. The experiments compared YOLOv8-ASFF with four established mainstream network models, including YOLOv8 [35], YOLOv5 [36], CornerNet [37], and SSD [38]. To ensure the reliability of the model test results, the hardware equipment and software environment were kept consistent throughout the study.…”
Section: Dataset Training Of Yolov8mentioning
confidence: 99%