Work place: Ramrao Adik Institute of Technology, D Y Patil Deemed to be University, Computer Engineering Department, Navi Mumbai, 400706, India
E-mail: apurva.shinde1812@gmail.com
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Biography
Apurva Shinde is working as an Assistant Professor in the Department of Computer Engineering at Ramrao Adik Institute of Technology, D. Y. Patil Deemed to be University, Nerul, Navi Mumbai. She completed her B.E. and M.E. in Computer Engineering in 2013 and 2016, respectively. She is currently pursuing her Ph.D. from Ramrao Adik Institute of Technology in the domain of Medical Image Processing. She has over 12 years of teaching and research experience and has published several research papers in reputed journals and conferences. Her research interests include Image Processing, Machine Learning, and Data Science.
By Apurva S. Shinde Sangita S. Chaudhari
DOI: https://doi.org/10.5815/ijigsp.2026.03.06, Pub. Date: 8 Jun. 2026
Melanoma skin disease is a major concern for skin cancer-related deaths worldwide. Early diagnosis and detection are crucial for improving patient outcomes. However, existing detection methods often result in false alarms, highlighting the need for more accurate and reliable approaches. This paper proposes a Dual-Stream Semi-Supervised Melanoma Network (DS-MelNet) for melanoma detection. The DS-MelNet utilizes a semi-supervised learning framework to incorporate both labeled and unlabeled data, enhancing detection accuracy. The model's performance is evaluated on the SIIM-ISIC Melanoma Classification Challenge dataset. The dataset undergoes hair detection and removal from skin lesion images using three algorithms proposed in literature viz. Modified Dull Razor, Modified E-shaver and Adaptive principle curvature with Modified dull razor fusion. Performance of the proposed models is assessed through commonly used metrics that include Accuracy, Recall, Precision, and F1-score. Comparative analysis of the DS-MelNet is performed against two benchmarks: Simple Convolutional Neural Network (SCNN) and a Fine-tuned VGG-16 model proposed in this paper. The results clearly indicate that the DS-MelNet demonstrates superior performance, achieving an accuracy of 86% and outperforming both SCNN (76%) and VGG-16 (82%) models. This exceptional performance underscores the potential of the DS-MelNet for effective melanoma classification. The study highlights the promise of semi-supervised learning frameworks and sophisticated neural networks in enhancing melanoma diagnostics. The ability of the proposed model to learn from a small set of labeled data makes it highly suitable for real-world applications where annotated datasets are limited.
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