Identification of Skin Disease Using Deep Learning

Authors

  • Shravani Kharat  Department of Computer Engineering, Dr. D. Y. Patil Institute of Technology, Pune, Maharashtra, India
  • Pooja Shinde  Department of Computer Engineering, Dr. D. Y. Patil Institute of Technology, Pune, Maharashtra, India
  • Preeti Malwadkar  Department of Computer Engineering, Dr. D. Y. Patil Institute of Technology, Pune, Maharashtra, India
  • Prof. Dipti Chaudhari  Department of Computer Engineering, Dr. D. Y. Patil Institute of Technology, Pune, Maharashtra, India

DOI:

https://doi.org/10.32628/CSEIT2063218

Keywords:

Skin disease, Deep Learning, Convolutional Neural Networks, Image Identification

Abstract

Globally, skin diseases are among the most common health problems in all humans irrespective of age. Prevention and early detection of these diseases can improve the chance of surviving. This model illustrates the identification of skin diseases providing more objective and reliable solutions using deep learning technology and convolutional neural network approach. In this model, the system design, implementation and identification of common skin diseases such as acne, blister, eczema, warts etc. are explained. The system applies deep learning technology to train itself with various images of skin diseases from the Kaggle platform. The accuracy obtained by using deep learning is 83.23%. The main objective of this system is to achieve maximum accuracy of skin disease prediction. Moreover, if the disease is identified the system provides detailed information about the diseases along with home remedies.

References

  1.  “Evaluation of Melanoma Diagnosis using Deep Features” by Lucas Bezerra Maia, Alan Lima, Roberto Matheus Pinheiro Pereira, Geraldo Braz J ́unior, Jo ̃ao Dallyson Sousade Almeida, Anselmo Cardoso de Paiva, 2018 IEEE.
  2. Nazia Hameed, Antesar M., M. A. Hossain pro-posed ”Multi-Class Skin Diseases Classification Using Deep Convolutional Neural Network and Support Vector Machine, 2018 IEEE.
  3. Jainesh Rathod, Vishal Waghmode, Aniruddh Sodha,Dr. Prasenjit Bhavathankar proposed “Diagnosis of skin diseases using Convolution Neural Networks”, 2018 IEEE.
  4. Noel C. F. Codella, David Gutman, M. Emre Celebi3, Brian Helba,Michael A. Marchetti, Stephen W. Dusza, Aadi Kalloo, KonstantinosLiopyris, Nabin Mishra, Harald Kittler, Allan Halpern, SKIN LESIONANALYSIS TOWARD MELANOMA DETECTION, 2018 IEEE
  5. Sourav Kumar Patnaik, Mansher Singh Sidhu,Yaagyanika Gehlot, Bhairvi Sharma and P Muthu proposed”Automated Skin Disease Identification using Deep Learning Algorithm” ,Biomedical &Pharmacology Journal 2018.
  6. R. S. Gound, Priyanka S. Gadre, Jyoti B. Gaikwad , Priyanka K.Wagh, Skin Disease Diagnosis System using Image Processing and DataMining, International Journal of Computer Applications 2018
  7. Md. Iqbal Quraishi, J Pal Choudhury and Mallika De , Image Recogni-tion and Processing Using Artificial Neural Network, 2018 IEEE.
  8. Li-sheng Wei , Quan Gan, and Tao Ji, Skin Disease Recognition MethodBased on Image Color and Texture Features, Hindawi, Computationaland Mathematical Methods in Medicine 2018.
  9. Zulfikar Zulfikar, Zulhelmi Zulhelmi, Teuku Yuliar Arif, Afdhal Afdhal,Putra Nasri Syawaldi, Android Application: Skin Abnormality Analysisbased on Edge Detection Technique, 2018 IEEE.
  10. Soniya Mane, Dr. Swati Shinde, A Method for Melanoma Skin CancerDetection Using Dermoscopy Images, 2018 IEEE.
  11. Md. Asaduzzaman Rasela, S. M. Rukunuddin Osmanib, Shahed AlHasanc, Md. Hasanb, and Shahanaz Aktherd, Analyzing Skin PigmentDiscoloration on Cheeks by Using Image Processing, 2018 IEEE
  12. Er.Shrinidhi Gindhi, Ansari Nausheen, Ansari Zoya, Shaikh Ruhin, AnInnovative Approach for Skin Disease Detection Using Image Processingand Data Mining, IJIRCCE.2017
  13. Rahat Yasir, Md. Ashiqur Rahman, and Nova Ahmed , DermatologicalDisease Detection using Image Processing and Artificial Neural Net-work, 2014 IEEE.
  14. Damilola A. Okuboyejo, Oludayo O. Olugbara, and Solomon A.Odunaike , Automating Skin Disease Diagnosis Using Image Classifica-tion, Proceedings of the World Congress on Engineering and ComputerScience WCECS 2013.

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Published

2020-06-30

Issue

Section

Research Articles

How to Cite

[1]
Shravani Kharat, Pooja Shinde, Preeti Malwadkar, Prof. Dipti Chaudhari, " Identification of Skin Disease Using Deep Learning" International Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 6, Issue 3, pp.1011-1116, May-June-2020. Available at doi : https://doi.org/10.32628/CSEIT2063218