Leveraging SCNN for Enhanced Skin Cancer Detection Using Deep Learning Approaches
DOI:
https://doi.org/10.52783/jns.v14.2095Keywords:
Sequential Convolutional Neural Networks, melanoma, eczema, psoriasis, feature extractionAbstract
This paper presents the establishment of a skin disease identification system exploiting the deep learning strategies, uniquely called Sequential Convolutional Neural Networks (SCNNs), to automate the detection and classification of various skin conditions based on image data. By applying the SCNN proposed model on a varied collection of skin pictures, the system discover to realize the configurations and features reflective of different skin diseases, including melanoma, eczema, and psoriasis. Through feature extraction and classification, the model can accurately diagnose skin diseases. The proposed model produce a non-invasive and cost-effective approach to skin disease diagnosis, facilitating early intervention and timely treatment. Additionally, a user-friendly interface is created to host the system, allowing users to create accounts, upload skin images, and receive reports containing the identified disease along with preventative and precautionary measures. This implementation of deep learning for skin disease identification has the promising potential to enhance healthcare consequences by granting more efficient and more faultless diagnosis, ultimately improving patient care and quality of life. The proposed model gave the highest accuracy of prediction compare to the existing works.
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Nawal Soliman ALKolifi ALEnezi, Procedia Computer Science 163 (2019) 85–92A Method Of Skin Disease Detection Using Image Processing And Machine Learning.
N. D. Chowdary, S. Inturu, J. Katta, C. Yashwanth, N. S. H. V. Kanaparthi and S. Voore, "Skin Disease Detection and Recommendation System using Deep Learning and Cloud Computing," 2023 8th International Conference on Communication and Electronics Systems (ICCES), Coimbatore, India, 2023, pp. 1064-1068, doi: 10.1109/ICCES57224.2023.10192759. keywords: {Deep
K. A. Olatunji, A. Oguntimilehin, O. A. Adeyemo, O. M. Aweh, A. I. Abiodun and O. A. Bello, "Skin Disease Classification using Deep Learning Methods," 2022 5th Information Technology for Education and Development (ITED), Abuja, Nigeria, 2022, pp. 1-8, doi: 10.1109/ ITED56637. 2022.1005 1236 .
azia Hameed, Antesar M. Shabut, Miltu K. Ghosh, M.A. Hossain, Multi-class multi-level classification algorithm for skin lesions classification using machine learning techniques, Expert Systems with Applications, Volume 141,2020, 112961, ISSN 0957-4174, https://doi.org/ 10.1016/ j.eswa.2019.112961.
Nawal Soliman ALKolifi ALEnezi, A Method Of Skin Disease Detectio Using Image Processing And Machine Learning, Procedia Computer Science, Volume 163, 2019, Pages 85-92 ISSN 1877-0509, https:// doi.org/ 10.1016/j.procs.2019.12.090.
Balaji, V. R., Suganthi, S. T., Rajadevi, R., Kumar, V. K., Balaji, B. S., & Pandiyan, S. (2020). Skin disease detection and segmentation using dynamic graph cut algorithm and classification through Naive Bayes classifier. Measurement, 163, 107922.
Monishanker Halder∗, Hussain Moh. Emrul Kabir, Afsana Mimi Rity, and Arobindo Vowmik “An automated detection of Scabies skin disease Using Image Processing and CNN”, Dept of Computer Science and Engineering, Jashore University of Science and Technology, Bangladesh
Maragani Datta Pavan, Cherukuri Bhavath Ram, Vijaya Chandra Jadala, “Analysis on Convolutional Neural Network Model using Skin Disease Dataset”, Proceedings of the International Conference on Sustainable Computing and Smart Systems (ICSCSS 2023)IEEE Xplore Part Number: CFP23DJ3-ART; ISBN: 979-8-3503- 3360-2
Verma, A. K., Pal, S., & Kumar, S. (2019). Classification of skin disease using ensemble data mining techniques. Asian Pacific journal of cancer prevention: APJCP, 20(6), 1887.
Ahmad, B., Usama, M., Huang, C. M., Hwang, K., Hossain, M. S., & Muhammad, G. (2020). Discriminative feature learning for skin disease classification using deep convolutional neural network. IEEE Access, 8, 39025-39033
Vijayalakshmi, M. M. (2019). Melanoma skin cancer detection using image processing and machine learning. International Journal of Trend in Scientific Research and Development (IJTSRD), 3(4), 780-784.
Allugunti, V. R. (2022). A machine learning model for skin disease classification using convolution neural network. International Journal of Computing, Programming and Database Management, 3(1), 141-147.
Bhadula, S., Sharma, S., Juyal, P., & Kulshrestha, C. (2019). Machine learning algorithms-based skin disease detection. International Journal of Innovative Technology and Exploring Engineering (IJITEE), 9(2), 4044-4049.
ALEnezi, N. S. A. (2019). A method of skin disease detection using image processing and machine learning. Procedia Computer Science, 163, 85-92.
Shuchi Bhadula, Sachin Sharma, Piyush Juyal, Chitransh Kulshrestha Machine Learning Algorithms based Skin Disease Detection, International Journal of Innovative Technology and Exploring Engineering (IJITEE) ISSN: 2278-3075 (Online), Volume-9 Issue-2, December 2019.
Vasudevareddy Tatiparthi , Classification and detection of skin diseases based on CNN-powered image segmentation, 2023 3rd International Conference on Intelligent Technologies (CONIT)Karnataka, India. June 23-25, 2023.
Sameer Dev Sharma, Real-time Skin Disease Prediction System using Deep Learning Approach” 2023 International Conference on Computer Science and Emerging Technologies (CSET) -Skin Cancer Detection Using CNN
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